Literature Review

Submit a paper that is a review of the literature of academic/scholarly and professional knowledge/articles that are relevant to the specific topic selected (within the broader context of factors affecting passing along/sharing viral video advertising).

Save Time On Research and Writing
Hire a Pro to Write You a 100% Plagiarism-Free Paper.
Get My Paper
  • An introduction that defines viral advertising; presentation of your specific topic for investigation; a justification for studying this topic–why it is important to research it; what are the possible implications for marketers/advertisers/brands/communicators
  • The literature review (better to divide it into subheads)
  • Conclude your literature review with possible directions for future research in your selected topic.
  • APA style should be used throughout the proposal (in-text citations) and the reference list.
  • Use sources from assignment 2 
  • I will attach a template and sources and assignment 2 for reference 

double spaced 12 pts., Length: 10 pages  (excluding reference list). Format your paper (in text citations, reference list, title and subheads) in APA style.

When writing your literature review, always keep in mind the specific topic you selected to explore/investigate (see your paper of Assignment II for a refined version of your selected topic). Make sure you review literature/research that is relevant to the topic and helps explaining and developing it.

ALL CAPS FOR GRAD STUDENTS

Save Time On Research and Writing
Hire a Pro to Write You a 100% Plagiarism-Free Paper.
Get My Paper

1

2

ALL CAPS FOR GRAD STUDENTS

Catchy Part of the Title Goes Here: More Specific Part of Title Here

Your Name

ABSTRACT

Write a concise summary of the key points of your research. (Do not indent.) Your abstract should contain at least your research topic, research questions, participants, and methods. You may also include possible implications of your research and future work you see connected with your findings. Your abstract should be a single paragraph double-spaced. Your abstract should be between 150 and 250 words.

INTRODUCTION

This section should contain a preview of what your paper is about. The introduction presents the problem that the paper addresses. In an Introduction, you will: create interest; provide necessary background information; identify your main idea; and preview the rest of the essay. As mentioned in class, you will want to “set the stage” (Sears, 2015) for the rest of your paper.

After setting the stage for your paper, you will include a “rationale” here. Remember that this will provide the reason why it is important to study your subject. As mentioned in class, you can break this down into three areas of “rationale”: Research, Media, Personal Experience. This Introduction and Justification section of your paper should be approximately 2-3 pages. None of this paper should be in First Person.

Research

Here is where you discuss at least two studies that examined your subject. You would include information about the study (Jones, 2015) and how it relates to your Research Question/Hypothesis. Remember to properly cite in-text (Hubbard, 2014).

Media

In this paragraph, you would include the information from your Justification assignment that discusses something in the news or pop culture that may relate to your Research Question/Hypothesis. Some interesting subjects that could add support to your paper that could be listed here may include: Movies, Books, TV shows, News items, etc.

Experience

In this paragraph (remember that these three are only suggestions and can be in any order if you choose to use them), you will provide your own experience with this subject and why it supports your Research Question/Hypothesis. You will not use first person language. Instead, you would say, “This researcher has had personal experience with X”.

Therefore, due to the fact that (put your information on research here), (put key rationale from Media here), and (put key reasons from your personal experience here), the following will be posed:

RQ: This is where you will type your research question in a very basic form.

H: This is where you will restate your research question in a prediction/statement form.

LITERATURE REVIEW

In this section, you will provide a “review” of the “literature” (aka, your research studies you used for your Annotated Bibliography. Provide a brief (perhaps three sentence) overview of the areas of research you will be focused on here. Introduce your subject and remember that you will need a minimum of 10 sources discussed. You will use the chart we worked on in class to create your headers.

Broadest Theme

Here is where you will tie together (synthesize) the research studies that relates to your broadest theme. Remember that for many of you, this would be communication. Be sure to properly cite the authors (Author, 2006). If you use direct quotes, you must include the page number (Author, 2002, p. 36). Remember to end your first theme section with a transition sentence that gets us ready for the next theme. In other words, link the paragraphs together.

Next Broadest Theme

You will discuss the research studies that are related to this theme. Remember we put your 10 research studies into different “theme” categories (Sears, 2015) in class using the chart/worksheet. Remember that this Literature Review synthesizes the studies you found. You will not provide the information in an “annotated bibliography” format, where you explained the studies in order of author. Rather, you will provide the information in order of “theme” or “subject”. Remember to include that transition sentence here, linking this paragraph subject to the next.

Specific Theme

You will provide at least three themes/subjects for your topic/thesis. One way to categorize is to move from most broad to specific, which is what we discussed in class. One final tip is to be sure to use minimal direct quotes.

Provide a “transition” paragraph that “sums up” what you have written here. This may sound like your first paragraph of this section, and that is fine. Whereas in your first paragraph, you told us what you were going to tell us, in this final paragraph, you will tell us what you told us. You will also provide a final sentence that transitions to the “

Method

” section. As a final reminder, this entire assignment will be 10-12 pages, excluding the reference pages.

Method

This is the final part of your paper and will explain how you will get the information that will answer your Research Question and test your hypothesis. You may do a survey, experiment, interview, etc. You should read the instructions for Assignment 5 in order to complete this section. Depending on which method you choose, you will provide the information here. This may include such items as: participants, procedures (how you are going to administer the test), and a sample of the questions you will be asking. This section alone should be approximately 2 pages in length.

References

Contributors’ names (alphabetized) (Last edited date). Title of resource. Retrieved from http://Web address for

OWL resource

Angeli, E., Wagner, J., Lawrick, E., Moore, K., Anderson, M., Soderlund, L., & Brizee, A. (2010, May 5).

General format. Retrieved from http://owl.english.purdue.edu/owl/resource/560/01/

Running head: THE EVOLUTION OF VIRALITY AND SOCIAL SHARING IN DIGITAL MARKETING 1

THE EVOLUTION OF VIRALITY AND SOCIAL SHARING IN DIGITAL MARKETING 2

Author’s Name:

Instructor’s Name:

Institutional Affiliation:

Course Details:

Date of Submission:

The evolution of virality and social sharing in digital marketing

Introduction

Viral marketing refers to the promotional process generated when a buzz is created among online users, and electronic word-of-mouth facilitates increased content sharing. It was easy to facilitate virality in the past because users would share any content that they found funny, heartwarming, or inspiring. However, it is harder for content to go viral today because algorithms influence content shareability. The reality is that not all content that ought to go viral does, and not all content that goes viral deserves the popularity attached to it. Virality is determined by several factors that include timing and algorithms. What cannot be disputed is that content has to appeal to a large audience to have any chance of going viral. Digital marketers have to analyze several factors before creating promotional content to increase the chances of it going viral. This article discusses some facts that increase the chances of advertising content going viral.

Annotated Bibliography

Berger, J., & Milkman, K. L. (2012). What makes online content viral? Journal of Marketing Research, XLIX, 192-205. Retrieved from

file:///C:/Users/hp/Downloads/WhatMakesOnlineContentViral%20(1)

Researchers in this study analyzed content characteristics to discover emotional factors that facilitate virality. They first examined 7000 articles from the most popular newspapers like The New York Times to accomplish this objective. They then invested in lab experiments to manipulate emotions to determine the activation induced by this action. Results from these processes indicate that using contagious content that has already been proven to have immense shareability increases the chances of content going viral. That is because audiences remain attached to content that achieved virality. That has a greater chance of attracting potential customers than influencers or the study of consumer buying behavior. This information is relevant to the study of virality because it provides digital marketers with a cost-effective but labor-intensive method of achieving virality. Moreover, the researchers have not addressed the possibility of confirmation bias – where users hear their voice and exclude other perspectives- affecting conclusions drawn about the influence of popular content.

Himelboim, I., & Golan, J. (2019). A Social Networks Approach to Viral Advertising: The Role of Primary, Contextual, and Low Influencers. Society + Social Media, 1-13. Retrieved from

file:///C:/Users/hp/Downloads/ASocialNetworksApproachtoViral%20(1)

In this study, the authors aim to reveal the extent to which low, contextual, and primary influencers facilitate virality by increasing the number of consumers who purchase specified products. The researchers examine the advertising power wielded by these groups of influencers in the ‘Worlds Apart’ Heiniken campaign. This study, whose findings are meant to inform organizations’ advertising efforts, found that highly retweeted users attract the greatest numbers of consumers to a product. The researchers also found that the aggregated influence of highly mentioned users and low influencers increases their advertising power in social media networks like ‘Twitter’. Unlike the other two studies, this research prioritizes the importance of influencers in advertising efforts. There is confirmation bias, though, as the researchers only tested one dataset to examine the power wielded by influencers. This study is critical because it elaborates on how influencer marketing can increase brand awareness on social media platforms.

Pescher, C., Reichhart, P., & Spann, M. (2014). Consumer Decision-making Processes in Mobile

Viral Marketing Campaigns. Journal of Interactive Marketing, 28, 43-54. Retrieved from

file:///C:/Users/hp/Downloads/ConsumerDecision-makingProcessesinMobileViralMarketingCampaigns%20(1)

In this study, researchers examine the extent to which the mobile environment increases the possibility of content going viral by assessing the meanings ascribed to the exchange of messages in this setting. The research found that the entertainment value associated with the mobile platform makes it easier for consumers to share messages or forward them to friends, acquaintances, and strangers. That reveals the mobile phones as a factor that increases the possibility of content going viral, as consumers ascribe entertainment value to the mobile platform. However, these results cannot be generalized to a wider audience as researchers only examined a single product- a newly released music CD. This study focuses on how the mobile environment can increase the possibility of content going viral. In contrast, the other two studies assess the likelihood of popular content and influencers achieving the same. This study will help organizations resolve questions about reaching customers in the mobile environment.

References

Berger, J., & Milkman, K. L. (2012). What makes online content viral? Journal of Marketing Research, XLIX, 192-205. Retrieved from
file:///C:/Users/hp/Downloads/WhatMakesOnlineContentViral%20(1)

Himelboim, I., & Golan, J. (2019). A Social Networks Approach to Viral Advertising: The Role of Primary, Contextual, and Low Influencers. Society + Social Media, 1-13. Retrieved from
file:///C:/Users/hp/Downloads/ASocialNetworksApproachtoViral%20(1)

Pescher, C., Reichhart, P., & Spann, M. (2014). Consumer Decision-making Processes in Mobile
Viral Marketing Campaigns. Journal of Interactive Marketing, 28, 43-54. Retrieved from
file:///C:/Users/hp/Downloads/ConsumerDecision-makingProcessesinMobileViralMarketingCampaigns%20(1)

Journal of Marketing Research
Vol. XLIX (April 2012), 192 –205

*Jonah Berger is Joseph G. Campbell Assistant Professor of Marketing
(e-mail: jberger@wharton.upenn.edu), and Katherine L. Milkman is Assistant
Professor of Operations and Information Management (e-mail: kmilkman@
wharton.upenn.edu), the Wharton School, University of Pennsylvania.
Michael Buckley, Jason Chen, Michael Durkheimer, Henning Krohnstad,
Heidi Liu, Lauren McDevitt, Areeb Pirani, Jason Pollack, and Ronnie
Wang all provided helpful research assistance. Hector Castro and Premal
Vora created the web crawler that made this project possible, and Roger
Booth and James W. Pennebaker provided access to LIWC. Devin Pope
and Bill Simpson provided helpful suggestions on our analysis strategy.
Thanks to Max Bazerman, John Beshears, Jonathan Haidt, Chip Heath,
Yoshi Kashima, Dacher Keltner, Kim Peters, Mark Schaller, Deborah
Small, and Andrew Stephen for helpful comments on prior versions of the
article. The Dean’s Research Initiative and the Wharton Interactive Media
Initiative helped fund this research. Ravi Dhar served as associate editor
for this article.

JONAH BERGER and KATHERINE L. MILKMAN*

Why are certain pieces of online content (e.g., advertisements, videos,
news articles) more viral than others? This article takes a psychological
approach to understanding diffusion. Using a unique data set of all the
New York Times articles published over a three-month period, the authors
examine how emotion shapes virality. The results indicate that positive
content is more viral than negative content, but the relationship between
emotion and social transmission is more complex than valence alone.
Virality is partially driven by physiological arousal. Content that evokes
high-arousal positive (awe) or negative (anger or anxiety) emotions is
more viral. Content that evokes low-arousal, or deactivating, emotions
(e.g., sadness) is less viral. These results hold even when the authors
control for how surprising, interesting, or practically useful content is (all
of which are positively linked to virality), as well as external drivers of
attention (e.g., how prominently content was featured). Experimental
results further demonstrate the causal impact of specific emotion on
transmission and illustrate that it is driven by the level of activation
induced. Taken together, these findings shed light on why people share
content and how to design more effective viral marketing campaigns.

Keywords: word of mouth, viral marketing, social transmission, online
content

What Makes Online Content Viral?

© 2012, American Marketing Association
ISSN: 0022-2437 (print), 1547-7193 (electronic) 192

Sharing online content is an integral part of modern life.
People forward newspaper articles to their friends, pass
YouTube videos to their relatives, and send restaurant
reviews to their neighbors. Indeed, 59% of people report that
they frequently share online content with others (Allsop,
Bassett, and Hoskins 2007), and someone tweets a link to a
New York Times story once every four seconds (Harris 2010).
Such social transmission also has an important impact on

both consumers and brands. Decades of research suggest

that interpersonal communication affects attitudes and deci-
sion making (Asch 1956; Katz and Lazarsfeld 1955), and
recent work has demonstrated the causal impact of word of
mouth on product adoption and sales (Chevalier and Mayz –
lin 2006; Godes and Mayzlin 2009).
Although it is clear that social transmission is both fre-

quent and important, less is known about why certain pieces
of online content are more viral than others. Some customer
service experiences spread throughout the blogosphere,
while others are never shared. Some newspaper articles earn
a position on their website’s “most e-mailed list,” while oth-
ers languish. Companies often create online ad campaigns
or encourage consumer-generated content in the hope that
people will share this content with others, but some of these
efforts take off while others fail. Is virality just random, as
some argue (e.g., Cashmore 2009), or might certain charac-
teristics predict whether content will be highly shared?
This article examines how content characteristics affect

virality. In particular, we focus on how emotion shapes
social transmission. We do so in two ways. First, we analyze
a unique data set of nearly 7000 New York Times articles to
examine which articles make the newspaper’s “most e-
mailed list.” Controlling for external drivers of attention,
such as where an article was featured online and for how
long, we examine how content’s valence (i.e., whether an

http://crossmark.crossref.org/dialog/?doi=10.1509%2Fjmr.10.0353&domain=pdf&date_stamp=2012-04-01

What Makes Online Content Viral? 193

article is positive or negative) and the specific emotions it
evokes (e.g., anger, sadness, awe) affect whether it is highly
shared. Second, we experimentally manipulate the specific
emotion evoked by content to directly test the causal impact
of arousal on social transmission.
This research makes several important contributions. First,

research on word of mouth and viral marketing has focused
on its impact (i.e., on diffusion and sales; Godes and May-
zlin 2004, 2009; Goldenberg et al. 2009). However, there has
been less attention to its causes or what drives people to share
content with others and what type of content is more likely
to be shared. By combining a large-scale examination of real
transmission in the field with tightly controlled experiments,
we both demonstrate characteristics of viral online content
and shed light on the underlying processes that drive people
to share. Second, our findings provide insight into how to
design successful viral marketing campaigns. Word of mouth
and social media are viewed as cheaper and more effective
than traditional media, but their utility hinges on people
transmitting content that helps the brand. If no one shares a
company’s content or if consumers share content that por-
trays the company negatively, the benefit of social transmis-
sion is lost. Consequently, understanding what drives peo-
ple to share can help organizations and policy makers avoid
consumer backlash and craft contagious content.

CONTENT CHARACTERISTICS AND SOCIAL
TRANSMISSION

One reason people may share stories, news, and informa-
tion is because they contain useful information. Coupons or
articles about good restaurants help people save money and
eat better. Consumers may share such practically useful
content for altruistic reasons (e.g., to help others) or for self-
enhancement purposes (e.g., to appear knowledgeable, see
Wojnicki and Godes 2008). Practically useful content also has
social exchange value (Homans 1958), and people may share
it to generate reciprocity (Fehr, Kirchsteiger, and Riedl 1998).
Emotional aspects of content may also affect whether it is

shared (Heath, Bell, and Sternberg 2001). People report dis-
cussing many of their emotional experiences with others,
and customers report greater word of mouth at the extremes
of satisfaction (i.e., highly satisfied or highly dissatisfied;
Anderson 1998). People may share emotionally charged con-
tent to make sense of their experiences, reduce dissonance, or
deepen social connections (Festinger, Riecken, and Schachter
1956; Peters and Kashima 2007; Rime et al. 1991).
Emotional Valence and Social Transmission
These observations imply that emotionally evocative

content may be particularly viral, but which is more likely
to be shared—positive or negative content? While there is a
lay belief that people are more likely to pass along negative
news (Godes et al. 2005), this has never been tested. Fur-
thermore, the study on which this notion is based actually
focused on understanding what types of news people
encounter, not what they transmit (see Goodman 1999).
Consequently, researchers have noted that “more rigorous
research into the relative probabilities of transmission of
positive and negative information would be valuable to both
academics and managers” (Godes et al. 2005, p. 419).
We hypothesize that more positive content will be more

viral. Consumers often share content for self-presentation

purposes (Wojnicki and Godes 2008) or to communicate
identity, and consequently, positive content may be shared
more because it reflects positively on the sender. Most peo-
ple would prefer to be known as someone who shares
upbeat stories or makes others feel good rather than some-
one who shares things that makes others sad or upset. Shar-
ing positive content may also help boost others’ mood or
provide information about potential rewards (e.g., this
restaurant is worth trying).
The Role of Activation in Social Transmission
Importantly, however, the social transmission of emo-

tional content may be driven by more than just valence. In
addition to being positive or negative, emotions also differ
on the level of physiological arousal or activation they
evoke (Smith and Ellsworth 1985). Anger, anxiety, and sad-
ness are all negative emotions, for example, but while anger
and anxiety are characterized by states of heightened
arousal or activation, sadness is characterized by low
arousal or deactivation (Barrett and Russell 1998).
We suggest that these differences in arousal shape social

transmission (see also Berger 2011). Arousal is a state of
mobilization. While low arousal or deactivation is charac-
terized by relaxation, high arousal or activation is character-
ized by activity (for a review, see Heilman 1997). Indeed,
this excitatory state has been shown to increase action-
related behaviors such as getting up to help others (Gaertner
and Dovidio 1977) and responding faster to offers in nego-
tiations (Brooks and Schweitzer 2011). Given that sharing
information requires action, we suggest that activation
should have similar effects on social transmission and boost
the likelihood that content is highly shared.
If this is the case, even two emotions of the same valence

may have different effects on sharing if they induce differ-
ent levels of activation. Consider something that makes peo-
ple sad versus something that makes people angry. Both
emotions are negative, so a simple valence-based perspec-
tive would suggest that content that induces either emotion
should be less viral (e.g., people want to make their friends
feel good rather than bad). An arousal- or activation-based
analysis, however, provides a more nuanced perspective.
Although both emotions are negative, anger might increase
transmission (because it is characterized by high activation),
while sadness might actually decrease transmission
(because it is characterized by deactivation or inaction).

THE CURRENT RESEARCH
We examine how content characteristics drive social

transmission and virality. In particular, we not only examine
whether positive content is more viral than negative content
but go beyond mere valence to examine how specific emo-
tions evoked by content, and the activation they induce,
drive social transmission.
We study transmission in two ways. First, we investigate

the virality of almost 7000 articles from one of the world’s
most popular newspapers: the New York Times (Study 1).
Controlling for a host of factors (e.g., where articles are fea-
tured, how much interest they evoke), we examine how the
emotionality, valence, and specific emotions evoked by an
article affect its likelihood of making the New York Times’
most e-mailed list. Second, we conduct a series of lab
experiments (Studies 2a, 2b, and 3) to test the underlying

process we believe to be responsible for the observed
effects. By directly manipulating specific emotions and
measuring the activation they induce, we test our hypothe-
sis that content that evokes high-arousal emotion is more
likely to be shared.

STUDY 1: A FIELD STUDY OF EMOTIONS AND
VIRALITY

Our first study investigates what types of New York Times
articles are highly shared. The New York Times covers a
wide range of topics (e.g., world news, sports, travel), and
its articles are shared with a mix of friends (42%), relatives
(40%), colleagues (10%), and others (7%),1 making it an
ideal venue for examining the link between content charac-
teristics and virality. The New York Times continually
reports which articles from its website have been the most
e-mailed in the past 24 hours, and we examine how (1) an
article’s valence and (2) the extent to which it evokes vari-
ous specific emotions (e.g., anger or sadness) affect whether
it makes the New York Times’ most e-mailed list.
Negative emotions have been much better distinguished

from one another than positive emotions (Keltner and
Lerner 2010). Consequently, when considering specific
emotions, our archival analysis focuses on negative emo-
tions because they are straightforward to differentiate and
classify. Anger, anxiety, and sadness are often described as
basic, or universal, emotions (Ekman, Friesen, and Ellsworth
1982), and on the basis of our previous theorizing about
activation, we predict that negative emotions characterized
by activation (i.e., anger and anxiety) will be positively linked
to virality, while negative emotions characterized by deacti-
vation (i.e., sadness) will be negatively linked to virality.
We also examine whether awe, a high-arousal positive

emotion, is linked to virality. Awe is characterized by a feeling
of admiration and elevation in the face of something greater
than oneself (e.g., a new scientific discovery, someone over-
coming adversity; see Keltner and Haidt 2003). It is gener-
ated by stimuli that open the mind to unconsidered possibil-
ities, and the arousal it induces may promote transmission.
Importantly, our empirical analyses control for several

potentially confounding variables. First, as we noted previ-
ously, practically useful content may be more viral because it
provides information. Self-presentation motives also shape
transmission (Wojnicki and Godes 2008), and people may
share interesting or surprising content because it is entertain-
ing and reflects positively on them (i.e., suggests that they
know interesting or entertaining things). Consequently, we
control for these factors to examine the link between emotion
and virality beyond them (though their relationships with
virality may be of interest to some scholars and practitioners).
Second, our analyses also control for things beyond the

content itself. Articles that appear on the front page of the
newspaper or spend more time in prominent positions on
the New York Times’ home page may receive more attention
and thus mechanically have a better chance of making the
most e-mailed list. Consequently, we control for these and
other potential external drivers of attention.2 Including these

controls also enables us to compare the relative impact of
placement versus content characteristics in shaping virality.
While being heavily advertised, or in this case prominently
featured, should likely increase the chance content makes
the most e-mailed list, we examine whether content charac-
teristics (e.g., whether an article is positive or awe-inspiring)
are of similar importance.
Data
We collected information about all New York Times arti-

cles that appeared on the newspaper’s home page (www.
nytimes. com) between August 30 and November 30, 2008
(6956 articles). We captured data using a web crawler that
visited the New York Times’ home page every 15 minutes
during the period in question. It recorded information about
every article on the home page and each article on the most
e-mailed list (updated every 15 minutes). We captured each
article’s title, full text, author(s), topic area (e.g., opinion,
sports), and two-sentence summary created by the New York
Times. We also captured each article’s section, page, and
publication date if it appeared in the print paper, as well as
the dates, times, locations, and durations of all appearances
it made on the New York Times’ home page. Of the articles
in our data set, 20% earned a position on the most e-mailed
list.
Article Coding
We coded the articles on several dimensions. First, we

used automated sentiment analysis to quantify the positivity
(i.e., valence) and emotionality (i.e., affect ladenness) of
each article. These methods are well established (Pang and
Lee 2008) and increase coding ease and objectivity. Auto-
mated ratings were also significantly positively correlated
with manual coders’ ratings of a subset of articles. A com-
puter program (LIWC) counted the number of positive and
negative words in each article using a list of 7630 words clas-
sified as positive or negative by human readers (Pennebaker,
Booth, and Francis 2007). We quantified positivity as the
difference between the percentage of positive and negative
words in an article. We quantified emotionality as the per-
centage of words that were classified as either positive or
negative.
Second, we relied on human coders to classify the extent

to which content exhibited other, more specific characteris-
tics (e.g., evoked anger) because automated coding systems
were not available for these variables. In addition to coding
whether articles contained practically useful information or
evoked interest or surprise (control variables), coders quan-
tified the extent to which each article evoked anxiety, anger,
awe, or sadness.3 Coders were blind to our hypotheses.
They received the title and summary of each article, a web
link to the article’s full text, and detailed coding instructions
(see the Web Appendix at www.marketingpower.com/jmr_
webappendix). Given the overwhelming number of articles
in our data set, we selected a random subsample for coding

194 JOURNAL OF MARKETING RESEARCH, APRIL 2012

1These figures are based on 343 New York Times readers who were asked
with whom they had most recently shared an article.
2Discussion with newspaper staff indicated that editorial decisions about

how to feature articles on the home page are made independently of (and
well before) their appearance on the most e-mailed list.

3Given that prior work has examined how the emotion of disgust might
affect the transmission of urban legends (Heath, Bell, and Sternberg 2001),
we also include disgust in our analysis. (The rest of the results remain
unchanged regardless of whether it is in the model.) While we do not find
any significant relationship between disgust and virality, this may be due
in part to the notion that in general, New York Times articles elicit little of
this emotion.

What Makes Online Content Viral? 195

(n = 2566). For each dimension (awe, anger, anxiety, sad-
ness, surprise, practical utility, and interest), a separate
group of three independent raters rated each article on a
five-point Likert scale according to the extent to which it
was characterized by the construct in question (1 = “not at
all,” and 5 = “extremely”). We gave raters feedback on their
coding of a test set of articles until it was clear that they
understood the relevant construct. Interrater reliability was
high on all dimensions (all ’s > .70), indicating that con-
tent tends to evoke similar emotions across people. We
averaged scores across coders and standardized them (for
sample articles that scored highly on the different dimen-
sions, see Table 1; for summary statistics, see Table 2; and
for correlations between variables, see the Appendix). We
assigned all uncoded articles a score of zero on each dimen-
sion after standardization (i.e., we assigned uncoded articles
the mean value), and we included a dummy in regression
analyses to control for uncoded stories (for a discussion of
this standard imputation methodology, see Cohen and
Cohen 1983). This enabled us to use the full set of articles
collected to analyze the relationship between other content
characteristics (that did not require manual coding) and
virality. Using only the coded subset of articles provides
similar results.

Additional Controls
As we discussed previously, external factors (separate

from content characteristics) may affect an article’s virality
by functioning like advertising. Consequently, we rigor-
ously control for such factors in our analyses (for a list of
all independent variables including controls, see Table 3).
Appearance in the physical newspaper. To characterize

where an article appeared in the physical newspaper, we
created dummy variables to control for the article’s section
(e.g., Section A). We also created indicator variables to
quantify the page in a given section (e.g., A1) where an arti-
cle appeared in print to control for the possibility that
appearing earlier in some sections has a different effect than
appearing earlier in others.
Appearance on the home page. To characterize how much

time an article spent in prominent positions on the home
page, we created variables that indicated where, when, and
for how long every article was featured on the New York
Times home page. The home page layout remained the same
throughout the period of data collection. Articles could
appear in several dozen positions on the home page, so we
aggregated positions into seven general regions based on
locations that likely receive similar amounts of attention
(Figure 1). We included variables indicating the amount of
time an article spent in each of these seven regions as
controls after Winsorization of the top 1% of outliers (to
prevent extreme outliers from exerting undue influence on
our results; for summary statistics, see Tables WA1 and
WA2 in the Web Appendix at www.marketingpower. com/
jmr_ webappendix).
Release timing and author fame. To control for the possi-

bility that articles released at different times of day receive
different amounts of attention, we created controls for the
time of day (6 A.M.–6 P.M. or 6 P.M.–6 A.M. eastern standard
time) when an article first appeared online. We control for
author fame to ensure that our results are not driven by the
tastes of particularly popular writers whose stories may be
more likely to be shared. To quantify author fame, we cap-
ture the number of Google hits returned by a search for each
first author’s full name (as of February 15, 2009). Because

Table 1
ARTICLES THAT SCORED HIGHLY ON DIFFERENT DIMENSIONS

Primary Predictors
Emotionality

•“Redefining Depression as Mere Sadness”
•“When All Else Fails, Blaming the Patient Often Comes Next”

Positivity
•“Wide-Eyed New Arrivals Falling in Love with the City”
•“Tony Award for Philanthropy”

(Low Scoring)
•“Web Rumors Tied to Korean Actress’s Suicide”
•“Germany: Baby Polar Bear’s Feeder Dies”

Awe
•“Rare Treatment Is Reported to Cure AIDS Patient”
•“The Promise and Power of RNA”

Anger
•“What Red Ink? Wall Street Paid Hefty Bonuses”
•“Loan Titans Paid McCain Adviser Nearly $2 Million”

Anxiety
•“For Stocks, Worst Single-Day Drop in Two Decades”
•“Home Prices Seem Far from Bottom”

Sadness
•“Maimed on 9/11, Trying to Be Whole Again”
•“Obama Pays Tribute to His Grandmother After She Dies”

Control Variables
Practical Utility

•“Voter Resources”
•“It Comes in Beige or Black, but You Make It Green” (a story
about being environmentally friendly when disposing of old
computers)

Interest
•“Love, Sex and the Changing Landscape of Infidelity”
•“Teams Prepare for the Courtship of LeBron James”

Surprise
•“Passion for Food Adjusts to Fit Passion for Running” (a story
about a restaurateur who runs marathons)
•“Pecking, but No Order, on Streets of East Harlem” (a story about
chickens in Harlem)

Table 2
PREDICTOR VARIABLE SUMMARY STATISTICS

M SD
Primary Predictor Variables
Emotionalitya 7.43% 1.92%
Positivitya .98% 1.84%
Awea 1.81 .71
Angera 1.47 .51
Anxietya 1.55 .64
Sadnessa 1.31 .41

Other Control Variables
Practical utilitya 1.66 1.01
Interesta 2.71 .85
Surprisea 2.25 .87
Word count 1021.35 668.94
Complexitya 11.08 1.54
Author fame 9.13 2.54
Author female .29 .45
Author male .66 .48
aThese summary statistics pertain to the variable in question before

standardization.

of its skew, we use the logarithm of this variable as a con-
trol in our analyses. We also control for variables that might
both influence transmission and the likelihood that an arti-
cle possesses certain characteristics (e.g., evokes anger).
Writing complexity. We control for how difficult a piece

of writing is to read using the SMOG Complexity Index
(McLaughlin 1969). This widely used index variable essen-
tially measures the grade-level appropriateness of the writ-
ing. Alternate complexity measures yield similar results.
Author gender. Because male and female authors have

different writing styles (Koppel, Argamon, and Shimoni
2002; Milkman, Carmona, and Gleason 2007), we control
for the gender of an article’s first author (male, female, or
unknown due to a missing byline). We classify gender using
a first name mapping list from prior research (Morton,
Zettelmeyer, and Silva-Risso 2003). For names that were
classified as gender neutral or did not appear on this list,
research assistants determined author gender by finding the
authors online.
Article length and day dummies. We also control for an

article’s length in words. Longer articles may be more likely
to go into enough detail to inspire awe or evoke anger but
may simply be more viral because they contain more infor-

mation. Finally, we use day dummies to control for both
competition among articles to make the most e-mailed list
(i.e., other content that came out the same day) as well as
any other time-specific effects (e.g., world events that might
affect article characteristics and reader interest).
Analysis Strategy
Almost all articles that make the most e-mailed list do so

only once (i.e., they do not leave the list and reappear), so
we model list making as a single event (for further discus-
sion, see the Web Appendix at www.marketingpower.com/
jmr_ webappendix). We rely on the following logistic
regression specification:

where makes_itat is a variable that takes a value of 1 when
an article a released online on day t earns a position on the
most e-mailed list and 0 otherwise, and t is an unobserved
day-specific effect. Our primary predictor variables quantify
the extent to which article a published on day t was coded as
positive, emotional, awe inspiring, anger inducing, anxiety
inducing, or sadness inducing. The term Xat is a vector of
the other control variables described previously (see Table
3). We estimate the equation with fixed effects for the day
of an article’s release, clustering standard errors by day of
release. (Results are similar if fixed effects are not included.)
Results
Is positive or negative content more viral? First, we

examine content valence. The results indicate that content is
more likely to become viral the more positive it is (Table 4,
Model 1). Model 2 shows that more affect-laden content,
regardless of valence, is more likely to make the most e-
mailed list, but the returns to increased positivity persist
even controlling for emotionality more generally. From a
different perspective, when we include both the percentage
of positive and negative words in an article as separate pre-
dictors (instead of emotionality and valence), both are posi-
tively associated with making the most e-mailed list. How-
ever, the coefficient on positive words is considerably larger
than that on negative words. This indicates that while more
positive or more negative content is more viral than content
that does not evoke emotion, positive content is more viral
than negative content.
The nature of our data set is particularly useful here

because it enables us to disentangle preferential transmis-
sion from mere base rates (see Godes et al. 2005). For
example, if it were observed that there was more positive
than negative word of mouth overall, it would be unclear
whether this outcome was driven by (1) what people
encounter (e.g., people may come across more positive
events than negative ones) or (2) what people prefer to pass
on (i.e., positive or negative content). Thus, without know-
ing what people could have shared, it is difficult to infer
much about what they prefer to share. Access to the full cor-

=

+ −

α + β ×
+ β ×
+ β × + β ×
+ β ×
+ β × + ′θ ×























(1)makes_it 1

1 exp

z-emotionality
z-positivity
z-awe z-anger
z-anxiety
z-sadness X

,at
t 1 at
2 at
3 at 4 at
5 at
6 at at

Table 3
PREDICTOR VARIABLES

Variable Where It Came from
Main Independent Variables
Emotionality Coded through textual analysis

(LIWC)
Positivity Coded through textual analysis

(LIWC)
Awe Manually coded
Anger Manually coded
Anxiety Manually coded
Sadness Manually coded

Content Controls
Practical utility Manually coded
Interest Manually coded
Surprise Manually coded

Other Control Variables
Word count Coded through textual analysis

(LIWC)
Author fame Log of number of hits returned by

Google search of author’s name
Writing complexity SMOG Complexity Index

(McLaughlin 1969)
Author gender List mapping names to genders

(Morton et al. 2003)
Author byline missing Captured by web crawler
Article section Captured by web crawler
Hours spent in different places on Captured by web crawler
the home page

Section of the physical paper Captured by web crawler
(e.g., A)

Page in section in the physical Captured by web crawler
paper (e.g., A1)

Time of day the article appeared Captured by web crawler
Day the article appeared Captured by web crawler
Category of the article (e.g., sports) Captured by web crawler

196 JOURNAL OF MARKETING RESEARCH, APRIL 2012

What Makes Online Content Viral? 197

Figure 1
HOME PAGE LOCATION CLASSIFICATIONS

!”#$%

&

‘()*+,&

-(./&0/12&

-“33)/&4/5%*./&65.&

6(7(+&8″2%&

9(:&4/5%*./&

0/5.&9(:&
4/5%*./&

6*))/%/3&
;*<=4/5%*./&

&
&

& &

& & &

&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&

:
&
&

& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&

55/
/

&
&
& &
& & &
&
& &
&
&

%))/
5/4;*<=

&
&
& &
& & &
&
& &
&
&

3&%
*.%5

&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&
&
&
& &
& & &
&
& &
&
&

Notes: Portions with “X” through them always featured Associated Press and Reuters news stories, videos, blogs, or advertisements rather than articles by
New York Times reporters.

pus of articles published by the New York Times over the
analysis period as well as all content that made the most e-
mailed list enables us to separate these possibilities. Taking
into account all published articles, our results show that an
article is more likely to make the most e-mailed list the
more positive it is.
How do specific emotions affect virality? The relation-

ships between specific emotions and virality suggest that the
role of emotion in transmission is more complex than mere
valence alone (Table 4, Model 3). While more awe-inspiring
(a positive emotion) content is more viral and sadness-
inducing (a negative emotion) content is less viral, some
negative emotions are positively associated with virality.
More anxiety- and anger-inducing stories are both more
likely to make the most e-mailed list. This suggests that
transmission is about more than simply sharing positive
things and avoiding sharing negative ones. Consistent with
our theorizing, content that evokes high-arousal emotions
(i.e., awe, anger, and anxiety), regardless of their valence, is
more viral.
Other factors. These results persist when we control for a

host of other factors (Table 4, Model 4). More notably,
informative (practically useful), interesting, and surprising
articles are more likely to make the New York Times’ most
e-mailed list, but our focal results are significant even after
we control for these content characteristics. Similarly, being

featured for longer in more prominent positions on the New
York Times home page (e.g., the lead story vs. at the bottom
of the page) is positively associated with making the most
e-mailed list, but the relationships between emotional char-
acteristics of content and virality persist even after we con-
trol for this type of “advertising.” This suggests that the
heightened virality of stories that evoke certain emotions is
not simply driven by editors featuring those types of stories,
which could mechanically increase their virality.4 Longer
articles, articles by more famous authors, and articles writ-
ten by women are also more likely to make the most e-
mailed list, but our results are robust to including these fac-
tors as well.
Robustness checks. The results are also robust to control-

ling for an article’s general topic (20 areas classified by the
New York Times, such as science and health; Table 4, Model
5). This indicates that our findings are not merely driven by
certain areas tending to both evoke certain emotions and be
particularly likely to make the most e-mailed list. Rather,

4Furthermore, regressing the various content characteristics on being
featured suggests that topical section (e.g., national news vs. sports), rather
than an integral affect, determines where articles are featured. The results
show that general topical areas (e.g., opinion) are strongly related to
whether and where articles are featured on the home page, while emotional
characteristics are not.

198 JOURNAL OF MARKETING RESEARCH, APRIL 2012

Table 4
AN ARTICLE’S LIKELIHOOD OF MAKING THE NEW YORK TIMES’ MOST E-MAILED LIST AS A FUNCTION OF ITS CONTENT

CHARACTERISTICS

Specific Including Including Section Only Coded
Positivity Emotionality Emotions Controls Dummies Articles
(1) (2) (3) (4) (5) (6)

Emotion Predictors
Positivity .13*** .11*** .17*** .16*** .14*** .23***

(.03) (.03) (.03) (.04) (.04) (.05)
Emotionality — .27*** .26*** .22*** .09* .29***

— (.03) (.03) (.04) (.04) (.06)
Specific Emotions
Awe — — .46*** .34*** .30*** .36***

— — (.05) (.05) (.06) (.06)
Anger — — .44*** .38*** .29** .37***

— — (.06) (.09) (.10) (.10)
Anxiety — — .20*** .24*** .21*** .27***

— — (.05) (.07) (.07) (.07)
Sadness — — –.19*** –.17* –.12† –.16*

— — (.05) (.07) (.07) (.07)
Content Controls
Practical utility — — — .34*** .18** .27***

— — — (.06) (.07) (.06)
Interest — — — .29*** .31*** .27***

— — — (.06) (.07) (.07)
Surprise — — — .16** .24*** .18**

— — — (.06) (.06) (.06)
Home Page Location Control Variables
Top feature — — — .13*** .11*** .11***

— — — (.02) (.02) (.03)
Near top feature — — — .11*** .10*** .12***

— — — (.01) (.01) (.01)
Right column — — — .14*** .10*** .15***

— — — (.01) (.02) (.02)
Middle feature bar — — — .06*** .05*** .06***

— — — (.00) (.01) (.01)
Bulleted subfeature — — — .04** .04** .05*

— — — (.01) (.01) (.02)
More news — — — .01 .06*** –.01

— — — (.01) (.01) (.02)
Bottom list ¥ 10 — — — .06** .11*** .08**

— — — (.02) (.03) (.03)
Other Control Variables
Word count ¥ 10–3 — — — .52*** .71*** .57***

— — — (.11) (.12) (.18)
Complexity — — — .05 .05 .06

— — — (.04) (.04) (.07)
First author fame — — — .17*** .15*** .15***

— — — (.02) (.02) (.03)
Female first author — — — .36*** .33*** .27*

— — — (.08) (.09) (.13)
Uncredited — — — .39 –.56* .50

— — — (.26) (.27) (.37)
Newspaper location and
web timing controls No No No Yes Yes Yes

Article section dummies
(e.g., arts, books) No No No No Yes No

Observations 6956 6956 6956 6956 6956 2566
McFadden’s R2 .00 .04 .07 .28 .36 .32
Log-pseudo-likelihood –3245.85 –3118.45 –3034.17 –2331.37 –2084.85 –904.76
†Significant at the 10% level.
*Significant at 5% level.
**Significant at 1% level.
***Significant at the .1% level.
Notes: The logistic regressions models that appear in this table predict whether an article makes the New York Times’ most emailed list. Successive models

include added control variables, with the exception of Model 6. Model 6 presents our primary regression specification (see Model 4), including only observa-
tions of articles whose content was hand-coded by research assistants. All models include day fixed effects. Models 4–6 include disgust (hand-coded) as a
control because disgust has been linked to transmission in previous research (Heath et al. 2001), and including this control allows for a more conservative test
of our hypotheses. Its effect is never significant, and dropping this control variable does not change any of our results.

What Makes Online Content Viral? 199

this more conservative test of our hypothesis suggests that
the observed relationships between emotion and virality hold
not only across topics but also within them. Even among
opinion or health articles, for example, awe-inspiring arti-
cles are more viral.
Finally, our results remain meaningfully unchanged in

terms of magnitude and significance if we perform a host of
other robustness checks, including analyzing only the 2566
hand-coded articles (Table 4, Model 6), removing day fixed
effects, and using alternate ways of quantifying emotion
(for more robustness checks and analyses using article rank
or time on the most e-mailed list as alternate dependent
measures, see the Web Appendix at www.marketingpower.
com/ jmr_webappendix). These results indicate that the
observed results are not an artifact of the particular regres-
sion specifications we rely on in our primary analyses.
Discussion
Analysis of more than three months of New York Times

articles sheds light on what types of online content become
viral and why. Contributing to the debate on whether posi-
tive or negative content is more likely to be shared, our
results demonstrate that more positive content is more viral.
Importantly, however, our findings also reveal that virality
is driven by more than just valence. Sadness, anger, and
anxiety are all negative emotions, but while sadder content
is less viral, content that evokes more anxiety or anger is
actually more viral. These findings are consistent with our
hypothesis about how arousal shapes social transmission.
Positive and negative emotions characterized by activation
or arousal (i.e., awe, anxiety, and anger) are positively
linked to virality, while emotions characterized by deactiva-
tion (i.e., sadness) are negatively linked to virality.
More broadly, our results suggest that while external

drivers of attention (e.g., being prominently featured) shape
what becomes viral, content characteristics are of similar
importance (see Figure 2). For example, a one-standard-
deviation increase in the amount of anger an article evokes
increases the odds that it will make the most e-mailed list
by 34% (Table 4, Model 4). This increase is equivalent to
spending an additional 2.9 hours as the lead story on the
New York Times website, which is nearly four times the
average number of hours articles spend in that position.
Similarly, a one-standard-deviation increase in awe increases
the odds of making the most e-mailed list by 30%.
These field results are consistent with the notion that acti-

vation drives social transmission. To more directly test the
process behind our specific emotions findings, we turn to
the laboratory.
STUDY 2: HOW HIGH-AROUSAL EMOTIONS AFFECT

TRANSMISSION
Our experiments had three main goals. First, we wanted

to directly test the causal impact of specific emotions on
sharing. The field study illustrates that content that evokes
activating emotions is more likely to be viral, but by manip-
ulating specific emotions in a more controlled setting, we
can more cleanly examine how they affect transmission.
Second, we wanted to test the hypothesized mechanism
behind these effects—namely, whether the arousal induced
by content drives transmission. Third, while the New York
Times provided a broad domain to study transmission, we

wanted to test whether our findings would generalize to
other marketing content.
We asked participants how likely they would be to share

a story about a recent advertising campaign (Study 2a) or
customer service experience (Study 2b) and manipulated
whether the story in question evoked more or less of a spe-
cific emotion (amusement in Study 2a and anger in Study
2b). To test the generalizability of the effects, we examined
how both positive (amusement, Study 2a) and negative
(anger, Study 2b) high-arousal emotions characterized influ-
ence transmission. If arousal increases sharing, content that
evokes more of an activating emotion (amusement or anger)
should be more likely to be shared. Finally, we measured
experienced activation to test whether it drives the effect of
emotion on sharing.
Study2a: Amusement
Participants (N = 49) were randomly assigned to read

either a high- or low-amusement version of a story about a
recent advertising campaign for Jimmy Dean sausages. The
two versions were adapted from prior work (McGraw and
Warren 2010) showing that they differed on how much
humor they evoked (a pretest showed that they did not differ
in how much interest they evoked). In the low-amusement
condition, Jimmy Dean decides to hire a farmer as the new
spokesperson for the company’s line of pork products. In
the high-amusement condition, Jimmy Dean decides to hire
a rabbi (which is funny given that the company makes pork
products and that pork is not considered kosher). After read-
ing about the campaign, participants were asked how likely

Figure 2
PERCENTAGE CHANGE IN FITTED PROBABILITY OF MAKING
THE LIST FOR A ONE-STANDARD-DEVIATION INCREASE
ABOVE THE MEAN IN AN ARTICLE CHARACTERISTIC

% Change in Fitted Probability of Making the List
–20% 20% 40%0%

21%

34%

–16%

30%

13%

18%

25%

14%

30%

20%

Anxiety (+1SD)

Anger (+1SD)

Sadness (+1SD)

Awe (+1SD)

Positivity (+1SD)

Emotionality (+1SD)

Interest (+1SD)

Surprise (+1SD)

Practical Value (+1SD)

Time at top of
home page (+1SD)

200 JOURNAL OF MARKETING RESEARCH, APRIL 2012

they would be to share it with others (1 = “not at all likely,”
and 7 = “extremely likely”).
Participants also rated their level of arousal using three

seven-point scales (“How do you feel right now?” Scales
were anchored at “very passive/very active,” “very mellow/
very fired up,” and “very low energy/very high energy”:  =
82; we adapted this measure from Berger [2011] and aver-
aged the responses to form an activation index).
Results. As we predicted, participants reported they

would be more likely to share the advertising campaign
when it induced more amusement, and this was driven by
the arousal it evoked. First, participants reported that they
would be more likely to share the advertisement if they
were in the high-amusement (M = 3.97) as opposed to low-
amusement condition (M = 2.92; F(1, 47) = 10.89, p < .005). Second, the results were similar for arousal; the high- amusement condition (M = 3.73) evoked more arousal than the low-amusement condition (M = 2.92; F(1, 47) = 5.24, p < .05). Third, as we predicted, this boost in arousal medi- ated the effect of the amusement condition on sharing. Con- dition was linked to arousal (high_amusement = .39, SE = .17; t(47) = 2.29, p < .05); arousal was linked to sharing (activa- tion = .58, SE = .11; t(47) = 5.06, p < .001); and when we included both the amusement condition and arousal in a regression predicting sharing, arousal mediated the effect of amusement on transmission (Sobel z = 2.02, p < .05). Study2b: Anger Participants (N = 45) were randomly assigned to read

either a high- or low-anger version of a story about a (real)
negative customer service experience with United Airlines
(Negroni 2009). We pretested the two versions to ensure
that they evoked different amounts of anger but not other
specific emotions, interest, or positivity in general. In both
conditions, the story described a music group traveling on
United Airlines to begin a week-long-tour of shows in
Nebraska. As they were about to leave, however, they
noticed that the United baggage handlers were mishandling
their guitars. They asked for help from flight attendants, but
by the time they landed, the guitars had been damaged. In
the high-anger condition, the story was titled “United
Smashes Guitars,” and it described how the baggage han-
dlers seemed not to care about the guitars and how United
was unwilling to pay for the damages. In the low-anger con-
dition, the story was titled “United Dents Guitars,” and it
described the baggage handlers as having dropped the gui-
tars but United was willing to help pay for the damages.
After reading the story, participants rated how likely they
would be to share the customer service experience as well
as their arousal using the scales from Study 2a.
Results. As we predicted, participants reported that they

would be more likely to share the customer service experi-
ence when it induced more anger, and this was driven by the
arousal it evoked. First, participants reported being more
likely to share the customer service experience if they were
in the high-anger condition (M = 5.71) as opposed to low-
anger condition (M = 3.37; F(1, 43) = 18.06, p < .001). Sec- ond, the results were similar for arousal; the high-anger con- dition (M = 4.48) evoked more arousal than the low-anger condition (M = 3.00; F(1, 43) = 10.44, p < .005). Third, as in Study 2a, this boost in arousal mediated the effect of con- dition on sharing. Regression analyses show that condition

was linked to arousal (high_anger = .74, SE = .23; t(44) =
3.23, p < .005); arousal was linked to sharing (activation = .65, SE = .17; t(44) = 3.85, p < .001); and when we included both anger condition and arousal in a regression, arousal mediated the effect of anger on transmission (Sobel z = 1.95, p = .05). Discussion The experimental results reinforce the findings from our

archival field study, support our hypothesized process, and
generalize our findings to a broader range of content. First,
consistent with our analysis of the New York Times’ most e-
mailed list, the amount of emotion content evoked influ-
enced transmission. People reported that they would be
more likely to share an advertisement when it evoked more
amusement (Study 2a) and a customer service experience
when it evoked more anger (Study 2b). Second, the results
underscore our hypothesized mechanism: Arousal mediated
the impact of emotion on social transmission. Content that
evokes more anger or amusement is more likely to be
shared, and this is driven by the level of activation it
induces.
STUDY 3: HOW DEACTIVATING EMOTIONS AFFECT

TRANSMISSION
Our final experiment further tests the role of arousal by

examining how deactivating emotions affect transmission.
Studies 2a and 2b show that increasing the amount of high-
arousal emotions boosts social transmission due to the acti-
vation it induces, but if our theory is correct, these effects
should reverse for low-arousal emotions. Content that
evokes more sadness, for example, should be less likely to
be shared because it deactivates rather than activates.
Note that this is a particularly strong test of our theory

because the prediction goes against several alternative
explanations for our findings in Study 2. It could be argued
that evoking more of any specific emotion makes content
better or more compelling, but such an explanation would
suggest that evoking more sadness should increase (rather
than decrease) transmission.
Method
Participants (N = 47) were randomly assigned to read

either a high- or low-sadness version of a news article. We
pretested the two versions to ensure that they evoked differ-
ent amounts of sadness but not other specific emotions,
interest, or positivity in general. In both conditions, the arti-
cle described someone who had to have titanium pins
implanted in her hands and relearn her grip after sustaining
injuries. The difference between conditions was the source
of the injury. In the high-sadness condition, the story was
taken directly from our New York Times data set. It was
titled “Maimed on 9/11: Trying to Be Whole Again,” and it
detailed how someone who worked in the World Trade Cen-
ter sustained an injury during the September 11 attacks. In
the low-sadness condition, the story was titled “Trying to
Be Better Again,” and it detailed how the person sustained
the injury falling down the stairs at her office. After reading
one of these two versions of the story, participants answered
the same sharing and arousal questions as in Study 2.
As we predicted, when the context evoked a deactivating

(i.e., de-arousing) emotion, the effects on transmission were

What Makes Online Content Viral? 201

reversed. First, participants were less likely to share the story
if they were in the high-sadness condition (M = 2.39) as
opposed to the low-sadness condition (M = 3.80; F(1, 46) =
10.78, p < .005). Second, the results were similar for arousal; the high-sadness condition (M = 2.75) evoked less arousal than the low-sadness condition (M = 3.89; F(1, 46) = 10.29, p < .005). Third, as we hypothesized, this decrease in arousal mediated the effect of condition on sharing. Condition was linked to arousal (high_sadness = –.57, SE = .18; t(46) = –3.21, p < .005); arousal was linked to sharing (activation = .67, SE = .15, t(46) = 4.52, p < .001); and when we included both sadness condition and arousal in a regression predict- ing sharing, arousal mediated the effect of sadness on trans- mission (Sobel z = –2.32, p < .05). Discussion The results of Study 3 further underscore the role of

arousal in social transmission. Consistent with the findings
of our field study, when content evoked more of a low-
arousal emotion, it was less likely to be shared. Further-
more, these effects were again driven by arousal. When a
story evoked more sadness, it decreased arousal, which in
turn decreased transmission. The finding that the effect of
specific emotion intensity on transmission reversed when
the emotion was deactivating provides even stronger evi-
dence for our theoretical perspective. While it could be
argued that content evoking more emotion is more interest-
ing or engaging (and, indeed, pretest results suggest that this
is the case in this experiment), these results show that such
increased emotion may actually decrease transmission if the
specific emotion evoked is characterized by deactivation.

GENERAL DISCUSSION
The emergence of social media (e.g., Facebook, Twitter)

has boosted interest in word of mouth and viral marketing.
It is clear that consumers often share online content and that
social transmission influences product adoption and sales,
but less is known about why consumers share content or
why certain content becomes viral. Furthermore, although
diffusion research has examined how certain people (e.g.,
social hubs, influentials) and social network structures
might influence social transmission, but less attention has
been given to how characteristics of content that spread
across social ties might shape collective outcomes.
The current research takes a multimethod approach to

studying virality. By combining a broad analysis of virality
in the field with a series of controlled laboratory experi-
ments, we document characteristics of viral content while
also shedding light on what drives social transmission.
Our findings make several contributions to the existing

literature. First, they inform the ongoing debate about
whether people tend to share positive or negative content.
While common wisdom suggests that people tend to pass
along negative news more than positive news, our results
indicate that positive news is actually more viral. Further-
more, by examining the full corpus of New York Times con-
tent (i.e., all articles available), we determine that positive
content is more likely to be highly shared, even after we
control for how frequently it occurs.
Second, our results illustrate that the relationship between

emotion and virality is more complex than valence alone
and that arousal drives social transmission. Consistent with

our theorizing, online content that evoked high-arousal
emotions was more viral, regardless of whether those emo-
tions were of a positive (i.e., awe) or negative (i.e., anger or
anxiety) nature. Online content that evoked more of a deac-
tivating emotion (i.e., sadness), however, was actually less
likely to be viral. Experimentally manipulating specific
emotions in a controlled environment confirms the hypothe-
sized causal relationship between activation and social
transmission. When marketing content evoked more of spe-
cific emotions characterized by arousal (i.e., amusement in
Study 2a or anger in Study 2b), it was more likely to be
shared, but when it evoked specific emotion characterized
by deactivation (i.e., sadness in Study 3), it was less likely to
be shared. In addition, these effects were mediated by arousal,
further underscoring its impact on social transmission.
Demonstrating these relationships in both the laboratory

and the field, as well as across a large and diverse body of
content, underscores their generality. Furthermore, although
not a focus of our analysis, our field study also adds to the
literature by demonstrating that more practically useful,
interesting, and surprising content is more viral. Finally, the
naturalistic setting allows us to measure the relative impor-
tance of content characteristics and external drivers of atten-
tion in shaping virality. While being featured prominently,
for example, increases the likelihood that content will be
highly shared, our results suggest that content characteris-
tics are of similar importance.
Theoretical Implications
This research links psychological and sociological

approaches to studying diffusion. Prior research has mod-
eled product adoption (Bass 1969) and examined how social
networks shape diffusion and sales (Van den Bulte and
Wuyts 2007). However, macrolevel collective outcomes
(such as what becomes viral) also depend on microlevel
individual decisions about what to share. Consequently,
when trying to understand collective outcomes, it is impor-
tant to consider the underlying individual-level psychologi-
cal processes that drive social transmission (Berger 2011;
Berger and Schwartz 2011). Along these lines, this work
suggests that the emotion (and activation) that content
evokes helps determine which cultural items succeed in the
marketplace of ideas.
Our findings also suggest that social transmission is

about more than just value exchange or self-presentation
(see also Berger and Schwartz 2011). Consistent with the
notion that people share to entertain others, surprising and
interesting content is highly viral. Similarly, consistent with
the notion that people share to inform others or boost their
mood, practically useful and positive content is more viral.
These effects are all consistent with the idea that people
may share content to help others, generate reciprocity, or
boost their reputation (e.g., show they know entertaining or
useful things). Even after we control for these effects, how-
ever, we find that highly arousing content (e.g., anxiety
evoking, anger evoking) is more likely to make the most e-
mailed list. Such content does not clearly produce immedi-
ate economic value in the traditional sense or even neces-
sarily reflect favorably on the self. This suggests that social
transmission may be less about motivation and more about
the transmitter’s internal states.

202 JOURNAL OF MARKETING RESEARCH, APRIL 2012

It is also worthwhile to consider these findings in relation
to literature on characteristics of effective advertising. Just
as certain characteristics of advertisements may make them
more effective, certain characteristics of content may make
it more likely to be shared. While there is likely some over-
lap in these factors (e.g., creative advertisements are more
effective [Goldenberg, Mazursky, and Solomon 1999] and
are likely shared more), there may also be some important
differences. For example, while negative emotions may hurt
brand and product attitudes (Edell and Burke 1987), we
have shown that some negative emotions can actually
increase social transmission.
Directions for Further Research
Future work might examine how audience size moderates

what people share. People often e-mail online content to a
particular friend or two, but in other cases they may broad-
cast content to a much larger audience (e.g., tweeting, blog-
ging, posting it on their Facebook wall). Although the for-
mer (i.e., narrowcasting) can involve niche information
(e.g., sending an article about rowing to a friend who likes
crew), broadcasting likely requires posting content that has
broader appeal. It also seems likely that whereas narrow-
casting is recipient focused (i.e., what a recipient would
enjoy), broadcasting is self focused (i.e., what someone wants
to say about him- or herself or show others). Consequently,
self-presentation motives, identity signaling (e.g., Berger
and Heath 2007), or affiliation goals may play a stronger
role in shaping what people share with larger audiences.
Although our data do not allow us to speak to this issue

in great detail, we were able to investigate the link between
article characteristics and blogging. Halfway into our data
collection, we built a supplementary web crawler to capture
the New York Times’ list of the 25 articles that had appeared
in the most blogs over the previous 24 hours. Analysis sug-
gests that similar factors drive both virality and blogging:
More emotional, positive, interesting, and anger-inducing
and fewer sadness-inducing stories are likely to make the
most blogged list. Notably, the effect of practical utility
reverses: Although a practically useful story is more likely
to make the most e-mailed list, practically useful content is
marginally less likely to be blogged about. This may be due
in part to the nature of blogs as commentary. While movie
reviews, technology perspectives, and recipes all contain
useful information, they are already commentary, and thus
there may not be much added value from a blogger con-
tributing his or her spin on the issue.
Further research might also examine how the effects

observed here are moderated by situational factors. Given
that the weather can affect people’s moods (Keller et al.
2005), for example, it may affect the type of content that is
shared. People might be more likely to share positive stories
on overcast days, for example, to make others feel happier.
Other cues in the environment might also shape social trans-
mission by making certain topics more accessible (Berger
and Fitzsimons 2008; Berger and Schwartz 2011; Nedun-
gadi 1990). When the World Series is going on, for exam-
ple, people may be more likely to share a sports story
because that topic has been primed.
These findings also raise broader questions, such as how

much of social transmission is driven by the sender versus
the receiver and how much of it is motivated versus unmoti-

vated. While intuition might suggest that much of transmis-
sion is motivated (i.e., wanting to look good to others) and
based on the receiver and what he or she would find of value,
the current results highlight the important role of the sender’s
internal states in whether something is shared. That said, a
deeper understanding of these issues requires further research.
Marketing Implications
These findings also have important marketing implica-

tions. Considering the specific emotions content evokes
should help companies maximize revenue when placing
advertisements and should help online content providers
when pricing access to content (e.g., potentially charging
more for content that is more likely to be shared). It might
also be useful to feature or design content that evokes acti-
vating emotions because such content is likely to be shared
(thus increasing page views).
Our findings also shed light on how to design successful

viral marketing campaigns and craft contagious content.
While marketers often produce content that paints their
product in a positive light, our results suggest that content
will be more likely to be shared if it evokes high-arousal
emotions. Advertisements that make consumers content or
relaxed, for example, will not be as viral as those that amuse
them. Furthermore, while some marketers might shy away
from advertisements that evoke negative emotions, our
results suggest that negative emotion can actually increase
transmission if it is characterized by activation. BMW, for
example, created a series of short online films called “The
Hire” that they hoped would go viral and which included
car chases and story lines that often evoked anxiety (with
such titles as “Ambush” and “Hostage”). While one might
be concerned that negative emotion would hurt the brand,
our results suggest that it should increase transmission
because anxiety induces arousal. (Incidentally, “The Hire”
was highly successful, generating millions of views). Fol-
lowing this line of reasoning, public health information
should be more likely to be passed on if it is framed to
evoke anger or anxiety rather than sadness.
Similar points apply to managing online consumer senti-

ment. While some consumer-generated content (e.g.,
reviews, blog posts) is positive, much is negative and can
build into consumer backlashes if it is not carefully man-
aged. Mothers offended by a Motrin ad campaign, for exam-
ple, banded together and began posting negative YouTube
videos and tweets (Petrecca 2008). Although it is impossi-
ble to address all negative sentiment, our results indicate
that certain types of negativity may be more important to
address because they are more likely to be shared. Customer
experiences that evoke anxiety or anger, for example,
should be more likely to be shared than those that evoke
sadness (and textual analysis can be used to distinguish dif-
ferent types of posts). Consequently, it may be more impor-
tant to rectify experiences that make consumers anxious
rather than disappointed.
In conclusion, this research illuminates how content char-

acteristics shape whether it becomes viral. When attempting
to generate word of mouth, marketers often try targeting
“influentials,” or opinion leaders (i.e., some small set of
special people who, whether through having more social
ties or being more persuasive, theoretically have more influ-
ence than others). Although this approach is pervasive,

What Makes Online Content Viral? 203

recent research has cast doubt on its value (Bakshy et al.
2011; Watts 2007) and suggests that it is far from cost effec-
tive. Rather than targeting “special” people, the current
research suggests that it may be more beneficial to focus on
crafting contagious content. By considering how psycho-
logical processes shape social transmission, it is possible to
gain deeper insight into collective outcomes, such as what
becomes viral.

REFERENCES
Allsop, Dee T., Bryce R. Bassett, and James A. Hoskins (2007),
“Word-of-Mouth Research: Principles and Applications,” Jour-
nal of Advertising Research, 47 (4), 388–411.

Anderson, Eugene W. (1998), “Customer Satisfaction and Word-
of-Mouth,” Journal of Service Research, 1 (1), 5–17.

Asch, Solomon E. (1956), “Studies of Independence and Conform-
ity: A Minority of One Against a Unanimous Majority,” Psycho-
logical Monographs, 70 (416), 1–70.

Bakshy, Eytan, Jake M. Hofman, Winter A. Mason, and Duncan J.
Watts (2011), “Everyone’s an Influencer: Quantifying Influence
on Twitter,” Proceedings of the 4th International Conference on
Web Search and Data Mining, Hong Kong, (February 9–12),
65–74.

Barrett, Lisa Feldman and James A. Russell (1998), “Indepen-
dence and Bipolarity in the Structure of Current Affect,” Jour-
nal of Personality and Social Psychology, 74 (4), 967–84.

Bass, Frank (1969), “A New Product Growth Model for Consumer
Durables,” Management Science, 15 (5), 215–27.

Berger, Jonah (2011), “Arousal Increases Social Transmission of
Information,” Psychological Science, 22 (7), 891–93.

——— and Gráinne M. Fitzsimons (2008), “Dogs on the Street,
Pumas on Your Feet: How Cues in the Environment Influence
Product Evaluation and Choice,” Journal of Marketing
Research, 45 (February), 1–14.

——— and Chip Heath (2007), “Where Consumers Diverge from
Others: Identity-Signaling and Product Domains,” Journal of
Consumer Research, 34 (2), 121–34.

——— and Eric Schwartz (2011), “What Drives Immediate and
Ongoing Word-of-Mouth?” Journal of Marketing Research, 48
(October), 869–80.

Brooks, Alison Wood and Maurice E. Schweitzer (2011), “Can
Nervous Nelly Negotiate? How Anxiety Causes Negotiators to
Make Low First Offers, Exit Early, and Earn Less Profit,” Orga-
nizational Behavior and Human Decision Processes, 115 (1),
43–54.

Cashmore, Pete (2009), “YouTube: Why Do We Watch?” CNN.
com, (December 17), (accessed October 14, 2011), [available at
http://www.cnn.com/2009/TECH/12/17/cashmore. youtube/
index. html].

Chevalier, Judith A. and Dina Mayzlin (2006), “The Effect of
Word-of-Mouth on Sales: Online Book Reviews,” Journal of
Marketing Research, 43 (August), 345–54.

Cohen, Jacob and Patricia Cohen (1983), Applied Multiple Regres-
sion/Correlation Analysis for the Behavioral Sciences, 2d ed.
Hillsdale, NJ: Lawrence Erlbaum Associates.

Edell, Julie A. and Marian C. Burke (1987), “The Power of Feel-
ings in Understanding Advertising Effects,” Journal of Con-
sumer Research, 14 (December), 421–33.

Ekman, P., W.V. Friesen, and P. Ellsworth (1982), “What Emotion
Categories or Dimensions Can Observers Judge from Facial
Behavior?” in Emotion in the Human Face, P. Ekman, ed. New
York: Cambridge University Press, 39–55.

Fehr, Ernst, Georg Kirchsteiger, and Arno Riedl (1998), “Gift
Exchange and Reciprocity in Competitive Experimental Mar-
kets,” European Economic Review, 42 (1), 1–34.

Festinger, Leon, Henry W. Riecken, and Stanley Schachter (1956),
When Prophecy Fails. New York: Harper and Row.

Gaertner, Samuel L. and John F. Dovidio (1977), “The Subtlety of
White Racism, Arousal, and Helping Behavior,” Journal of Per-
sonality and Social Psychology, 35 (10), 691–707.

Godes, David and Dina Mayzlin (2004), “Using Online Conversa-
tions to Study Word-of-Mouth Communication,” Marketing Sci-
ence, 23 (4), 545–60.

——— and ——— (2009), “Firm-Created Word-of-Mouth Commu-
nication: Evidence from a Field Test,” Marketing Science, 28
(4), 721–39.

———, ———, Yubo Chen, Sanjiv Das, Chrysanthos Dellarocas,
Bruce Pfeiffer, et al. (2005), “The Firm’s Management of Social
Interactions,” Marketing Letters, 16 (3/4), 415–28.

Goldenberg, Jacob, David Mazursky, and Sorin Solomon (1999),
“Creativity Templates: Towards Identifying the Fundamental
Schemes of Quality Advertisements,” Marketing Science, 18
(3), 333–51.

———, Han Sangman, Donald R. Lehmann, and Jae W. Hong
(2009), “The Role of Hubs in the Adoption Process,” Journal of
Marketing, 73 (March), 1–13.

Goodman, J. (1999), “Basic Facts on Customer Complaint Behav-
ior and the Impact of Service on the Bottom Line,” (accessed
November 10, 2011), [available at http://www.e-satisfy.com/
pdf/ basicfacts. pdf].

Harris, Jacob (2010), “How Often Is the Times Tweeted,” New York
Times Open Blog, (April 15), [available at http://open. blogs.
nytimes.com/2010/04/15/how-often-is-the-times-tweeted/].

Heath, Chip, Chris Bell, and Emily Sternberg (2001), “Emotional
Selection in Memes: The Case of Urban Legends,” Journal of
Personality and Social Psychology, 81 (6), 1028–41.

Heilman, Kenneth M. (1997), “The Neurobiology of Emotional
Experience,” Journal of Neuropsychiatry and Clinical Neuro-
science, 9 (3), 439–48.

Homans, George C. (1958), “Social Behavior as Exchange,”
American Journal of Sociology, 63 (6), 597–606.

Katz, Elihu and Paul Felix Lazarsfeld (1955), Personal Influence:
The Part Played by People in the Flow of Mass Communication.
Glencoe, IL: The Free Press.

Keller, Matthew C., Barbara L. Fredrickson, Oscar Ybarra,
Stephane Cote, Kareem Johnson, Joe Mikels, et al. (2005), “A
Warm Heart and a Clear Head: The Contingent Effects of
Weather on Mood and Cognition,” Psychological Science, 16
(9), 724–31.

Keltner, Dacher and Jon Haidt (2003), “Approaching Awe: A
Moral, Spiritual, and Aesthetic Emotion,” Cognition and Emo-
tion, 17 (2), 297–314.

——— and Jennifer S. Lerner (2010), “Emotion,” in The Handbook
of Social Psychology, 5th ed., D. Gilbert, S. Fiske, and G. Lind-
sey, eds. New York: McGraw-Hill.

Koppel, Moshe, Shlomo Argamon, and Anat Rachel Shimoni
(2002), “Automatically Categorizing Written Texts by Author
Gender,” Literary and Linguistic Computing, 17 (4), 401–412.

McGraw, A. Peter and Caleb Warren (2010), “Benign Violations:
Making Immoral Behavior Funny,” Psychological Science, 21
(8), 1141–49.

McLaughlin, G. Harry (1969), “SMOG Grading: A New Readabil-
ity Formula,” Journal of Reading, 12 (8), 639–46.

Milkman, Katherine L., Rene Carmona, and William Gleason
(2007), “A Statistical Analysis of Editorial Influence and
Author-Character Similarities in 1990s New Yorker Fiction,”
Journal of Literary and Linguistic Computing, 22 (3), 305–328.

Morton, Fiona Scott, Florian Zettelmeyer, and Jorge Silva-Risso
(2003), “Consumer Information and Discrimination: Does the
Internet Affect the Pricing of New Cars to Women and Minori-
ties?” Quantitative Marketing and Economics, 1 (1), 65–92.

Nedungadi, Prakash (1990), “Recall and Consumer Consideration
Sets: Influencing Choice Without Altering Brand Evaluations,”
Journal of Consumer Research, 17 (3), 263–76.

204 JOURNAL OF MARKETING RESEARCH, APRIL 2012

Negroni, Christine (2009), “With Video, a Traveler Fights Back,”
The New York Times, (October 28).

Pang, Bo and Lillian Lee (2008), “Opinion Mining and Sentiment
Analysis,” Foundations and Trends in Information Retrieval, 2
(1/2), 1–135.

Pennebaker, James W., Roger J. Booth, and Martha E. Francis
(2007), LIWC2007: Linguistic Inquiry and Word Count, (accessed
October 14, 2011), [available at http://www.liwc.net/].

Peters, Kim and Yoshihasa Kashima (2007), “From Social Talk to
Social Action: Shaping the Social Triad with Emotion Sharing,”
Journal of Personality and Social Psychology, 93 (5), 780–97.

Petrecca, Laura (2008), “Offended Moms Get Tweet Revenge over
Motrin Ads,” USA Today, (November 19), (accessed October
14, 2011), [available at http://www.usatoday.com/tech/products/
2008-11-18-motrin-ads-twitter_N.htm].

Rime, Bernard, Batja Mesquita, Pierre Philippot, and Stefano Boca
(1991), “Beyond the Emotional Event: Six Studies on the Social
Sharing of Emotion,” Cognition and Emotion, 5 (September–
November), 435–65.

Smith, C.A. and P.C. Ellsworth (1985), “Patterns of Cognitive
Appraisal in Emotion,” Journal of Personality and Social Psy-
chology, 48 (4), 813–38.

Van den Bulte, Christophe and Stefan Wuyts (2007), Social Net-
works and Marketing. Cambridge, MA: Marketing Science
Institute.

Watts, Duncan J. (2007), “Challenging the Influentials Hypothe-
sis,” WOMMA Measuring Word of Mouth, 3, 201–211.

Wojnicki, Andrea C. and Dave Godes (2008), “Word-of-Mouth as
Self-Enhancement,” working paper, University of Toronto.

What Makes Online Content Viral? 205

Ap
pe
nd
ix

C
O
R
R
EL
AT
IO
N
S
BE
TW

EE
N
P
R
ED

IC
TO

R
V
AR

IA
BL
ES

W
or
d

Ne
ar

Bu
lle
ted

M
id
dl
e

Em
ot
io
n-

Pr
ac
tic
al

Co
un
t
Co
mp
lex

Au
th
or

Au
th
or

To
p

To
p

Ri
gh
t

Su
b-

M
or
e

Fe
at
ur
e

al
ity

Po
sit
ivi
ty

Aw
e

An
ge
r

An
xie
ty

Sa
dn
es
s

Ut
ili
ty

In
ter
es
t

Su
rp
ris
e

¥
10
–3

ity
Fa
me

Fe
ma
le

M
iss
in
g

Fe
at
ur
e
Fe
at
ur
e
Co
lu
mn

fea
tu
re

Ne
ws

Ba
r

Em
ot
io
na
lit
y

(1
.00

Po
sit
iv
ity

(.0
4*

(1
.00
Aw
e

–.0
2

(.0
2

(1
.00
An
ge
r
(.0
4*

–.1
6*

–.2
1*

(1
.00

An
xi
ety

(.0
3*

–.1
8*

–.1
1*

(.5
0*

(1
.00
Sa
dn
es
s

(.0
0

–.1
8*

(.0
8*

(.4
2*

(.4
5*

(1
.00

Pr
ac
tic
al
ut
ili
ty

(.0
6*

(.0
4*
–.1
1*

–.1
2*

(.0
7*

–.0
5*

(1
.00
In
ter
es
t

(.0
54
*

(.0
7*

(.2
6*

–.1
3*

–.2
4*

–.1
9*

–.0
6*

(1
.00
Su
rp
ris
e

–.1
0*

–.0
4*

(.2
4*

–.0
1

(.0
0

(.0
5*

–.0
5*

(.1
8*

(1
.00

W
or
d c
ou
nt
¥
10
–3

(.0
6*

.05
*

(.0
4*
(.0
2
(.0
0
(.0
0
–.0
1
(.0
6*

(.0
2*

(1
.00

Co
m
pl
ex
ity

(.0
5*
–.0
5*
–.0
4*

(.1
0*

(.1
3*

(.0
5*

(.0
1

–.1
1*
(.0
4*
–.0
6*
(1
.00

Au
th
or
fa
m
e

–.0
9*

–.0
3*

(.0
6*
(.0
1
(.0
3*
(.0
1
–.0
2
(.0
0
(.0
2
(.0
1
(.0
1
(1
.00

Au
th
or
fe
m
ale

–.0
7*

(.0
6*
(.0
1
–.0
3*
(.0
0
(.0
0
(.0
5*
–.0
1
(.0
7*
(.0
0

–.0
2*

(.0
0
(1
.00
M
iss
in
g

(.2
1*

(.0
3*
–.0
6*
(.0
3*
–.0
2
(.0
0
(.0
1
(.0
2
–.0
9*
–.0
1
(.0
2*

–.7
1*

–.1
5*

(1
.00

To
p f
ea
tu
re

(.0
1
–.0
2
–.0
3*
(.0
6*
(.0
6*
(.0
5*
(.0
2
–.0
3*
–.0
2*

(.2
8*

(.0
1
(.0
0
–.0
2
(.0
1
(1
.00

Ne
ar
to
p f
ea
tu
re

–.0
1
–.0
6*
–.0
2

(.1
5*

(.0
7*
(.0
7*
–.0
3*
–.0
5*
(.0
1

(.2
7*

(.0
6*
(.0
6*
–.0
1
–.0
5*
(.2
7*
(1
.00

Ri
gh
t c
ol
um
n

(.1
6*

(.0
5*
(.0
4*
(.0
0
–.0
2
–.0
2
(.0
5*
(.0
6*
–.0
2*
(.0
5*
–.0
1
–.0
3*
–.0
2
(.1
6*
(.0
2
–.0
4*
(1
.00

Bu
lle
ted
su
bf
ea
tu
re

(.0
0
–.0
2
–.0
5*

(.0
9*

(.0
8*
(.0
6*
(.0
4*
–.0
5*
–.0
4*
(.0
7*
(.0
3*
(.0
3*
(.0
1
–.0
4*

(.1
2*

(.1
2*
–.0
3*
(1
.00

M
or
e n
ew
s

–.0
8*

–.1
1*
–.0
1
(.0
7*
(.0
6*
(.0
6*
–.0
8*
–.0
4*
(.0
7*
–.0
2
(.0
9*
(.0
5*
–.0
1
–.0
7*
(.0
1
(.1
0*
–.0
6*
–.0
5*
(1
.00

M
id
dl
e f
ea
tu
re
ba
r

(.1
1*

(.1
0*

.06
*

–.0
6*
–.0
6*
–.0
5*
(.0
0
(.1
0*
(.0
4*
(.1
6*
–.0
6*
–.1
3*
(.0
0
(.1
3*
(.0
2
–.0
5*
(.0
7*
–.0
4*
–.0
8*
(1
.00

Bo
tto
m
li
st

(.0
3*
(.1
5*

.07
*

–.1
1*
–.0
9*
–.0
6*
(.0
6*
(.0
9*
(.0
4*

(.2
9*

–.0
4*
–.0
6*
(.0
5*
(.0
0
(.0
4*
–.0
5*
(.1
0*
(.0
0
–.0
9*
(.1
3*

*S
ig
ni
fic
an
t a
t t
he
5%

le
ve
l.

Disclaimer: This is a machine generated PDF of selected content from our products. This functionality is provided solely for your
convenience and is in no way intended to replace original scanned PDF. Neither Cengage Learning nor its licensors make any
representations or warranties with respect to the machine generated PDF. The PDF is automatically generated “AS IS” and “AS
AVAILABLE” and are not retained in our systems. CENGAGE LEARNING AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY
AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY,
ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGEMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR
PURPOSE. Your use of the machine generated PDF is subject to all use restrictions contained in The Cengage Learning Subscription
and License Agreement and/or the Gale OneFile: Communications and Mass Media Terms and Conditions and by using the machine
generated PDF functionality you agree to forgo any and all claims against Cengage Learning or its licensors for your use of the
machine generated PDF functionality and any output derived therefrom

.

The future of social media in marketing.

Authors: Gil Appel, Lauren Grewal, Rhonda Hadi and Andrew T. Stephen
Date: Jan. 2020

From: Journal of the Academy of Marketing Science(Vol. 48, Issue 1)
Publisher: Springer

Document Type: Report
Length: 14,610 words
DOI: http://dx.doi.org/10.1007/s11747-019-00695-1

Abstract:
Social media allows people to freely interact with others and offers multiple ways for marketers to reach and
engage with consumers. Considering the numerous ways social media affects individuals and businesses alike,
in this article, the authors focus on where they believe the future of social media lies when considering
marketing-related topics and issues. Drawing on academic research, discussions with industry leaders, and
popular discourse, the authors identify nine themes, organized by predicted imminence (i.e., the immediate, near,
and far futures), that they believe will meaningfully shape the future of social media through three lenses:
consumer, industry, and public policy. Within each theme, the authors describe the digital landscape, present
and discuss their predictions, and identify relevant future research directions for academics and practitioners.

Author(s): Gil Appel 1 , Lauren Grewal 2 , Rhonda Hadi 3 , Andrew T. Stephen 3 4

Author Affiliations:

(1) grid.42505.36, 0000 0001 2156 6853, Marshall School of Business, University of Southern California, , 701 Exposition Blvd,
90089, Los Angeles, CA, USA

(2) grid.254880.3, 0000 0001 2179 2404, Tuck School of Business, Dartmouth College, , 100 Tuck Hall, 03755, Hanover, NH,
USA

(3) grid.4991.5, 0000 0004 1936 8948, Saïd Business School, University of Oxford, , Park End Street, OX1 1HP, Oxford, UK

(4) grid.1002.3, 0000 0004 1936 7857, Monash Business School, Monash University, , Melbourne, Australia

Introduction

Social media is used by billions of people around the world and has fast become one of the defining technologies of our time.
Facebook, for example, reported having 2.38 billion monthly active users and 1.56 billion daily active users as of March 31,
2019 (Facebook 2019). Globally, the total number of social media users is estimated to grow to 3.29 billion users in 2022,
which will be 42.3% of the world’s population (eMarketer 2018). Given the massive potential audience available who are
spending many hours a day using social media across the various platforms, it is not surprising that marketers have embraced

http://dx.doi.org/10.1007/s11747-019-00695-1

social media as a marketing channel. Academically, social media has also been embraced, and an extensive body of research
on social media marketing and related topics, such as online word of mouth (WOM) and online networks, has been developed.
Despite what academics and practitioners have studied and learned over the last 15-20 years on this topic, due to the fast-
paced and ever-changing nature of social media-and how consumers use it-the future of social media in marketing might not
be merely a continuation of what we have already seen. Therefore, we ask a pertinent question, what is the future of social
media in marketing?

Addressing this question is the goal of this article. It is important to consider the future of social media in the context of
consumer behavior and marketing, since social media has become a vital marketing and communications channel for
businesses, organizations and institutions alike, including those in the political sphere. Moreover, social media is culturally
significant since it has become, for many, the primary domain in which they receive vast amounts of information, share content
and aspects of their lives with others, and receive information about the world around them (even though that information might
be of questionable accuracy). Vitally, social media is always changing. Social media as we know it today is different than even
a year ago (let alone a decade ago), and social media a year from now will likely be different than now. This is due to constant
innovation taking place on both the technology side (e.g., by the major platforms constantly adding new features and services)
and the user/consumer side (e.g., people finding new uses for social media) of social media.

What is social media?

Definitionally, social media can be thought of in a few different ways. In a practical sense, it is a collection of software-based
digital technologies-usually presented as apps and websites-that provide users with digital environments in which they can
send and receive digital content or information over some type of online social network. In this sense, we can think of social
media as the major platforms and their features, such as Facebook, Instagram, and Twitter. We can also in practical terms of
social media as another type of digital marketing channel that marketers can use to communicate with consumers through
advertising. But we can also think of social media more broadly, seeing it less as digital media and specific technology
services, and more as digital places where people conduct significant parts of their lives. From this perspective, it means that
social media becomes less about the specific technologies or platforms, and more about what people do in these
environments. To date, this has tended to be largely about information sharing, and, in marketing, often thought of as a form of
(online) word of mouth (WOM).

Building on these definitional perspectives, and thinking about the future, we consider social media to be a technology-centric-
but not entirely technological-ecosystem in which a diverse and complex set of behaviors, interactions, and exchanges
involving various kinds of interconnected actors (individuals and firms, organizations, and institutions) can occur. Social media
is pervasive, widely used, and culturally relevant. This definitional perspective is deliberately broad because we believe that
social media has essentially become almost anything-content, information, behaviors, people, organizations, institutions-that
can exist in an interconnected, networked digital environment where interactivity is possible. It has evolved from being simply
an online instantiation of WOM behaviors and content/information creation and sharing. It is pervasive across societies (and
geographic borders) and culturally prominent at both local and global levels.

Throughout the paper we consider many of the definitional and phenomenological aspects described above and explore their
implications for consumers and marketing in order to address our question about the future of marketing-related social media.
By drawing on academic research, discussions with industry leaders, popular discourse, and our own expertise, we present
and discuss a framework featuring nine themes that we believe will meaningfully shape the future of social media in marketing.
These themes by no means represent a comprehensive list of all emerging trends in the social media domain and include
aspects that are both familiar in extant social media marketing literature (e.g., online WOM, engagement, and user-generated
content) and emergent (e.g., sensory considerations in human-computer interaction and new types of unstructured data,
including text, audio, images, and video). The themes we present were chosen because they capture important changes in the
social media space through the lenses of important stakeholders, including consumers, industry/practice, and public policy.

In addition to describing the nature and consequences of each theme, we identify research directions that academics and
practitioners may wish to explore. While it is infeasible to forecast precisely what the future has in store or to project these on a
specific timeline, we have organized the emergent themes into three time-progressive waves, according to imminence of
impact (i.e., the immediate, near, and far future). Before presenting our framework for the future of social media in marketing
and its implications for research (and practice and policy), we provide a brief overview of where social media currently stands
as a major media and marketing channel.

Social media at present

The current social media landscape has two key aspects to it. First are the platforms-major and minor, established and
emerging-that provide the underlying technologies and business models making up the industry and ecosystem. Second are
the use cases; i.e., how various kinds of people and organizations are using these technologies and for what purposes.

The rise of social media, and the manner in which it has impacted both consumer behavior and marketing practice, has largely
been driven by the platforms themselves. Some readers might recall the “early days” of social media where social networking

Focal stakeholders discussed

Predicted
imminence

Individuals Firms Public policy

sites such as MySpace and Friendster were popular. These sites were precursors to Facebook and everything else that has
developed over the last decade. Alongside these platforms, we continue to have other forms of social media such as
messaging (which started with basic Internet Relay Chat services in the 1990s and the SMS text messaging built into early
digital mobile telephone standards in the 2000s), and asynchronous online conversations arranged around specific topics of
interest (e.g., threaded discussion forums, subreddits on Reddit). More recently, we have seen the rise of social media
platforms where images and videos replace text, such as Instagram and Snapchat.

Across platforms, historically and to the present day, the dominant business model has involved monetization of users
(audiences) by offering advertising services to anyone wishing to reach those audiences with digital content and marketing
communications. Prior research has examined the usefulness of social media (in its various forms) for marketing purposes. For
example, work by Trusov et al. (2009) and Stephen and Galak (2012) demonstrated that certain kinds of social interactions that
now happen on social media (e.g., “refer a friend” features and discussions in online communities) can positively affect
important marketing outcomes such as new customer acquisition and sales. More recently, the value of advertising on social
media continues to be explored (e.g., Gordon et al. 2019), as well as how it interacts with other forms of media such as
television (e.g., Fossen and Schweidel 2016, 2019) and affects new product adoption through diffusion of information
mechanisms (e.g., Hennig-Thurau et al. 2015).

Although the rise (and fall) of various kinds of social media platforms has been important for understanding the social media
landscape, our contention is that understanding the current situation of social media, at least from a marketing perspective, lies
more in what the users do on these platforms than the technologies or services offered by these platforms. Presently, people
around the world use social media in its various forms (e.g., news feeds on Facebook and Twitter, private messaging on
WhatsApp and WeChat, and discussion forums on Reddit) for a number of purposes. These can generally be categorized as
(1) digitally communicating and socializing with known others, such as family and friends, (2) doing the same but with unknown
others but who share common interests, and (3) accessing and contributing to digital content such as news, gossip, and user-
generated product reviews.

All of these use cases are essentially WOM in one form or another. This, at least, is how marketing scholars have mainly
characterized social media, as discussed by Lamberton and Stephen (2016). Indeed, online WOM has been-and, we contend,
will continue to be-important in marketing (e.g., in the meta-analysis by Babic Rosario et al. 2016 the authors found, on
average, a positive correlation between online WOM and sales). The present perspective on social media is that people use it
for creating, accessing, and spreading information via WOM to various types of others, be it known “strong ties” or “weak ties”
in their networks or unknown “strangers.” Some extant research has looked at social media from the WOM perspective of the
consequences of the transmission of WOM (e.g., creating a Facebook post or tweeting) on others (e.g., Herhausen et al. 2019;
Stephen and Lehmann 2016), the impact of the type of WOM content shared on others’ behavior (e.g., Villarroel Ordenes et al.
2017; Villarroel Ordenes et al. 2018), and on the motivations that drive consumer posting on social media, including
considerations of status and self-presentation (e.g., Grewal et al. 2019; Hennig-Thurau et al. 2004; Hollenbeck and Kaikati
2012; Toubia and Stephen 2013; Wallace et al. 2014).

While this current characterization of WOM appears reasonable, it considers social media only from a communications
perspective (and as a type of media channel). However, as social media matures, broader social implications emerge. To
appropriately consider the future, we must expand our perspective beyond the narrow communicative aspects of social media
and consider instead how consumers might use it. Hence, in our vision for the future of social media in marketing in the
following sections, we attempt to present a more expansive perspective of what social media is (and will become) and explain
why this perspective is relevant to marketing research and practice.

Overview of framework for the future of social media in marketing

In the following sections we present a framework for the immediate, near, and far future of social media in marketing when
considering various relevant stakeholders. Themes in the immediate future represent those which already exist in the current
marketplace, and that we believe will continue shaping the social media landscape. The near future section examines trends
that have shown early signs of manifesting, and that we believe will meaningfully alter the social media landscape in the
imminent future. Finally, themes designated as being in the far future represent more speculative projections that we deem
capable of long-term influence on the future of social media. The next sections delve into each of the themes in Table 1,
organized around the predicted imminence of these theme’s importance to marketing (i.e., the immediate, near, and far
futures).

Framework for the future of social media as it relates to marketing issues

Immediate future Omni-social presence

The rise of
influencers

Privacy concerns on
social media

Near future Combating loneliness
and isolation

Integrated customer care Social media as a
political tool

Far future Increased sensory
richness

Online/offline integration and
complete convergence

Social media by non-
humans

The immediate future

To begin our discussion on the direction of social media, in this section, we highlight three themes that have surfaced in the
current environment that we believe will continue to shape the social media landscape in the immediate future. These themes-
omni-social presence, the rise of influencers, and trust and privacy concerns-reflect the ever-changing digital and social media
landscape that we presently face. We believe that these different areas will influence a number of stakeholders such as
individual social media users, firms and brands that utilize social media, and public policymakers (e.g., governments,
regulators).

Omni-social presence

In its early days, social media activity was mostly confined to designated social media platforms such as Facebook and Twitter
(or their now-defunct precursors). However, a proliferation of websites and applications that primarily serve separate purposes
have capitalized on the opportunity to embed social media functionality into their interfaces. Similarly, all major mobile and
desktop operating systems have in-built social media integration (e.g., sharing functions built into Apple’s iOS). This has made
social media pervasive and ubiquitous-and perhaps even omnipotent-and has extended the ecosystem beyond dedicated
platforms.

Accordingly, consumers live in a world in which social media intersects with most aspects of their lives through digitally enabled
social interactivity in such domains as travel (e.g., TripAdvisor), work (e.g., LinkedIn), food (e.g., Yelp), music (e.g., Spotify),
and more. At the same time, traditional social media companies have augmented their platforms to provide a broader array of
functionalities and services (e.g., Facebook’s marketplace, Chowdry 2018; WeChat’s payment system, Cheng 2017). These
bidirectional trends suggest that the modern-day consumer is living in an increasingly “omni-social” world.

From a marketing perspective, the “omni-social” nature of the present environment suggests that virtually every part of a
consumer’s decision-making process is prone to social media influence. Need recognition might be activated when a consumer
watches their favorite beauty influencer trying a new product on YouTube. A consumer shopping for a car might search for
information by asking their Facebook friends what models they recommend. A hungry employee might sift through Yelp
reviews to evaluate different lunch options. A traveler might use Airbnb to book future accommodation. Finally, a highly
dissatisfied (or delighted) airline passenger might rant (rave) about their experience on Twitter. While the decision-making
funnel is arguably growing flatter than the aforementioned examples would imply (Cortizo-Burgess 2014), these independent
scenarios illustrate that social media has the propensity to influence the entire consumer-decision making process, from
beginning to end.

Finally, perhaps the greatest indication of an “omni-social” phenomenon is the manner in which social media appears to be
shaping culture itself. YouTube influencers are now cultural icons, with their own TV shows (Comm 2016) and product lines
(McClure 2015). Creative content in television and movies is often deliberately designed to be “gifable” and meme-friendly
(Bereznak 2018). “Made-for-Instagram museums” are encouraging artistic content and experiences that are optimized for
selfie-taking and posting (Pardes 2017). These examples suggest that social media’s influence is hardly restricted to the
“online” world (we discuss the potential obsolescence of this term later in this paper), but is rather consistently shaping cultural
artifacts (television, film, the arts) that transcend its traditional boundaries. We believe this trend will continue to manifest,
perhaps making the term “social media” itself out-of-date, as it’s omni-presence will be the default assumption for consumers,
businesses, and artists in various domains.

This omni-social trend generates many questions to probe in future research. For example, how will social interactivity
influence consumer behavior in areas that had traditionally been non-social? From a practitioner lens, it might also be
interesting to explore how marketers can strategically address the flatter decision-making funnel that social media has enabled,
and to examine how service providers can best alter experiential consumption when anticipating social media sharing behavior.

The rise of new forms of social influence (and influencers)

The idea of using celebrities (in consumer markets) or well-known opinion leaders (in business markets), who have a high
social value, to influence others is a well-known marketing strategy (Knoll and Matthes 2017). However, the omnipresence of
social media has tremendously increased the accessibility and appeal of this approach. For example, Selena Gomez has over
144 million followers on Instagram that she engages with each of her posts. In 2018, the exposure of a single photo shared by
her was valued at $3.4 million (Maxim 2018). However, she comes at a high price: one post that Selena sponsors for a brand
can cost upwards of $800,000 (Mejia 2018). However, putting high valuations on mere online exposures or collecting “likes” for
specific posts can be somewhat speculative, as academic research shows that acquiring “likes” on social media might have no
effect on consumers’ attitudes or behaviors (John et al. 2017; Mochon et al. 2017). Moreover, Hennig-Thurau et al. (2015),
show that while garnering positive WOM has little to no effect on consumer preferences, negative WOM can have a negative
effect on consumer preferences.

While celebrities like Selena Gomez are possible influencers for major brands, these traditional celebrities are so expensive
that smaller brands have begun, and will continue to, capitalize on the popularity and success of what are referred to as “micro-
influencers,” representing a new form of influencers. Micro-influencers are influencers who are not as well-known as celebrities,
but who have strong and enthusiastic followings that are usually more targeted, amounting anywhere between a few thousand
to hundreds of thousands of followers (Main 2017). In general, these types of influencers are considered to be more trustworthy
and authentic than traditional celebrities, which is a major reason influencer marketing has grown increasingly appealing to
brands (Enberg 2018). These individuals are often seen as credible “experts” in what they post about, encouraging others to
want to view the content they create and engage with them. Furthermore, using these influencers allows the brand via first
person narration (compared to ads), which is considered warmer and more personal, and was shown to be more effective in
engaging consumers (Chang et al. 2019).

Considering the possible reach and engagement influencers command on social media, companies have either begun
embracing influencers on social media, or plan to expand their efforts in this domain even more. For example, in recent
conversations we had with social media executives, several of them stated the growing importance of influencers and
mentioned how brands generally are looking to incorporate influencer marketing into their marketing strategies. Further, recent
conversations with executives at some globally leading brands suggest that influencer marketing spending by big brands
continues to rise.

While influencer marketing on social media is not new, we believe it has a lot of potential to develop further as an industry. In a
recent working paper, Duani et al. (2018) show that consumers enjoy watching a live experience much more and for longer
time periods than watching a prerecorded one. Hence, we think live streaming by influencers will continue to grow, in broad
domains as well as niche ones. For example, streaming of video game playing on Twitch, a platform owned by Amazon, may
still be niche but shows no signs of slowing down. However, live platforms are limited by the fact that the influencers, being
human, need to sleep and do other activities offline. Virtual influencers (i.e., “CGI” influencers that look human but are not), on
the other hand, have no such limitations. They never get tired or sick, they do not even eat (unless it is needed for a
campaign). Some brands have started exploring the use of virtual influencers (Nolan 2018), and we believe that in coming
years, along with stronger computing power and artificial intelligence algorithms, virtual influencers will become much more
prominent on social media, being able to invariably represent and act on brand values and engage with followers anytime.

There are many interesting future research avenues to consider when thinking about the role of influencers on social media.
First, determining what traits and qualities (e.g., authenticity, trust, credibility, and likability) make sponsored posts by a
traditional celebrity influencer, versus a micro-influencer, or even compared to a CGI influencer, more or less successful is
important to determine for marketers. Understanding whether success has to do with the actual influencer’s characteristics, the
type of content being posted, whether content is sponsored or not, and so on, are all relevant concerns for companies and
social media platforms when determining partnerships and where to invest effort in influencers. In addition, research can focus
on understanding the appeal of live influencer content, and how to successfully blend influencer content with more traditional
marketing mix approaches.

Privacy concerns on social media

Consumer concerns regarding data privacy, and their ability to trust brands and platforms are not new (for a review on data
privacy see Martin and Murphy 2017). Research in marketing and related disciplines has examined privacy and trust concerns
from multiple angles and using different definitions of privacy. For example, research has focused on the connections between
personalization and privacy (e.g., Aguirre et al. 2015; White et al. 2008), the relationship of privacy as it relates to consumer
trust and firm performance (e.g., Martin 2018; Martin et al. 2017), and the legal and ethical aspects of data and digital privacy
(e.g., Culnan and Williams 2009; Nill and Aalberts 2014). Despite this topic not seeming novel, the way consumers, brands,
policy makers, and social media platforms are all adjusting and adapting to these concerns are still in flux and without clear
resolution.

Making our understanding of privacy concerns even less straightforward is the fact that, across extant literature, a clear
definition of privacy is hard to come by. In one commentary on privacy, Stewart (2017), defined privacy as “being left alone,” as
this allows an individual to determine invasions of privacy. We build from this definition of privacy to speculate on a major issue
in privacy and trust moving forward. Specifically, how consumers are adapting and responding to the digital world, where
“being left alone” isn’t possible. For example, while research has shown benefits to personalization tactics (e.g., Chung et al.

2016), with eroding trust in social platforms and brands that advertise through them, many consumers would rather not share
data and privacy for a more personalized experiences, are uncomfortable with their purchases being tracked and think it should
be illegal for brands to be able to buy their data (Edelman 2018). These recent findings seem to be in conflict with previously
established work on consumer privacy expectations. Therefore, understanding if previously studied factors that mitigated the
negative effects of personalization (e.g., perceived utility; White et al. 2008) are still valued by consumers in an ever-changing
digital landscape is essential for future work.

In line with rising privacy concerns, the way consumers view brands and social media is becoming increasingly negative.
Consumers are deleting their social media presence, where research has shown that nearly 40% of digitally connected
individuals admitted to deleting at least one social media account due to fears of their personal data being mishandled
(Edelman 2018). This is a negative trend not only for social media platforms, but for the brands and advertisers who have
grown dependent on these avenues for reaching consumers. Edelman found that nearly half of the surveyed consumers
believed brands to be complicit in negative aspects of content on social media such as hate speech, inappropriate content, or
fake news (Edelman 2018). Considering that social media has become one of the best places for brands to engage with
consumers, build relationships, and provide customer service, it’s not only in the best interest of social media platforms to “do
better” in terms of policing content, but the onus of responsibility has been placed on brands to advocate for privacy, trust, and
the removal of fake or hateful content.

Therefore, to combat these negative consumer beliefs, changes will need to be made by everyone who benefits from consumer
engagement on social media. Social media platforms and brands need to consider three major concerns that are eroding
consumer trust: personal information, intellectual property and information security (Information Technology Faculty 2018).
Considering each of these concerns, specific actions and initiatives need to be taken for greater transparency and subsequent
trust. We believe that brands and agencies need to hold social media accountable for their actions regarding consumer data
(e.g., GDPR in the European Union) for consumers to feel “safe” and “in control,” two factors shown necessary in cases of
privacy concerns (e.g., Tucker 2014; Xu et al. 2012). As well, brands need to establish transparent policies regarding consumer
data in a way that recognizes the laws, advertising restrictions, and a consumer’s right to privacy (a view shared by others; e.g.,
Martin et al. 2017). All of this is managerially essential for brands to engender feelings of trust in the increasingly murky domain
of social media.

Future research can be conducted to determine consumer reactions to different types of changes and policies regarding data
and privacy. As well, another related and important direction for future research, will be to ascertain the spillover effects of
distrust on social media. Specifically, is all content shared on social media seen as less trustworthy if the platform itself is
distrusted? Does this extend to brand messages displayed online? Is there a negative spillover effect to other user-generated
content shared through these platforms?

The near future

In the previous section, we discussed three areas where we believe social media is immediately in flux. In this section, we
identify three trends that have shown early signs of manifesting, and which we believe will meaningfully alter the social media
landscape in the near, or not-too-distant, future. Each of these topics impact the stakeholders we mentioned when discussing
the immediate social media landscape.

Combatting loneliness and isolation

Social media has made it easier to reach people. When Facebook was founded in 2004, their mission was “to give people the
power to build community and bring the world closer together.. use Facebook to stay connected with friends and family, to
discover what’s going on in the world, and to share and express what matters to them” (Facebook 2019). Despite this mission,
and the reality that users are more “connected” to other people than ever before, loneliness and isolation are on the rise. Over
the last fifty years in the U.S., loneliness and isolation rates have doubled, with Generation Z considered to be the loneliest
generation (Cigna 2018). Considering these findings with the rise of social media, is the fear that Facebook is interfering with
real friendships and ironically spreading the isolation it was designed to conquer something to be considered about (Marche
2012)?

The role of social media in this “loneliness epidemic” is being hotly debated. Some research has shown that social media
negatively impacts consumer well-being. Specifically, heavy social media use has been associated with higher perceived social
isolation, loneliness, and depression (Kross et al. 2013; Primack et al. 2017; Steers et al. 2014). Additionally, Facebook use
has been shown to be negatively correlated with consumer well-being (Shakya and Christakis 2017) and correlational research
has shown that limiting social media use to 10 min can decrease feelings of loneliness and depression due to less FOMO (e.g.,
“fear of missing out;” Hunt et al. 2018).

On the other hand, research has shown that social media use alone is not a predictor of loneliness as other factors have to be
considered (Cigna 2018; Kim et al. 2009). In fact, while some research has shown no effect of social media on well-being
(Orben et al. 2019), other research has shown that social media can benefit individuals through a number of different avenues
such as teaching and developing socialization skills, allowing greater communication and access to a greater wealth of

resources, and helping with connection and belonging (American Psychological Association 2011; Baker and Algorta 2016;
Marker et al. 2018). As well, a working paper by Crolic et al. (2019) argues that much of the evidence of social media use on
consumer well-being is of questionable quality (e.g., small and non-representative samples, reliance on self-reported social
media use), and show that some types of social media use are positively associated with psychological well-being over time.

Managerially speaking, companies are beginning to respond as a repercussion of studies highlighting a negative relationship
between social media and negative wellbeing. For example, Facebook has created “time limit” tools (mobile operating systems,
such as iOS, now also have these time-limiting features). Specifically, users can now check their daily times, set up reminder
alerts that pop up when a self-imposed amount of time on the apps is hit, and there is the option to mute notifications for a set
period of time (Priday 2018). These different features seem well-intentioned and are designed to try and give people a more
positive social media experience. Whether these features will be used is unknown.

Future research can address whether or not consumers will use available “timing” tools on one of many devices in which their
social media exists (i.e., fake self-policing) or on all of their devices to actually curb behavior. It could also be the case that
users will actually spend less time on Facebook and Instagram, but possibly spend that extra time on other competing social
media platforms, or attached to devices, which theoretically will not help combat loneliness. Understanding how (and which)
consumers use these self-control tools and how impactful they are is a potentially valuable avenue for future research.

One aspect of social media that has yet to be considered in the loneliness discussion through empirical measures, is the
quality of use (versus quantity). Facebook ads have begun saying, “The best part of Facebook isn’t on Facebook. It’s when it
helps us get together” (Facebook 2019). There have been discussions around the authenticity of this type of message, but at
its core, in addition to promoting quantity differences, it’s speaking to how consumers use the platform. Possibly, to facilitate
this message, social media platforms will find new ways to create friend suggestions between individuals who not only share
similar interests and mutual friends to facilitate in-person friendships (e.g., locational data from the mobile app service).
Currently there are apps that allow people to search for friends that are physically close (e.g., Bumble Friends), and perhaps
social media will go in this same direction to address the loneliness epidemic and stay current.

Future research can examine whether the quantity of use, types of social media platforms, or the way social media is used
causally impacts perceived loneliness. Specifically, understanding if the negative correlations found between social media use
and well-being are due to the demographics of individuals who use a lot of social media, the way social media works, or the
way users choose to engage with the platform will be important for understanding social media’s role (or lack of role) in the
loneliness epidemic.

Integrated customer care

Customer care via digital channels as we know it is going to change substantially in the near future. To date, many brands
have used social media platforms as a place for providing customer care, addressing customers’ specific questions, and fixing
problems. In the future, social media-based customer care is expected to become even more customized, personalized, and
ubiquitous. Customers will be able to engage with firms anywhere and anytime, and solutions to customers’ problems will be
more accessible and immediate, perhaps even pre-emptive using predictive approaches (i.e., before a customer even notices
an issue or has a question pop into their mind).

Even today, we observe the benefits that companies gain from connecting with customers on social media for service- or care-
related purposes. Customer care is implemented in dedicated smartphone apps and via direct messaging on social media
platforms. However, it appears that firms want to make it even easier for customers to connect with them whenever and
wherever they might need. Requiring a customer to download a brand specific app or to search through various social media
platforms to connect with firms through the right branded account on a platform can be a cumbersome process. In those cases,
customers might instead churn or engage in negative WOM, instead of connecting with the firm to bring up any troubles they
might have.

The near future of customer care on social media appears to be more efficient and far-reaching. In a recent review on the
future of customer relationship management, Haenlein (2017) describes “invisible CRM” as future systems that will make
customer engagement simple and accessible for customers. New platforms have emerged to make the connection between
customer and firm effortless. Much of this is via instant messaging applications for businesses, which several leading
technology companies have recently launched as business-related features in existing platforms (e.g., contact business
features in Facebook Messenger and WhatsApp or Apple’s Business Chat).

These technologies allow businesses to directly communicate via social media messaging services with their customers.
Amazon, Apple, Facebook, and Google are in the process, or have already released early versions of such platforms (Dequier
2018). Customers can message a company, ask them questions, or even order products and services through the messaging
system, which is often built around chatbots and virtual assistants. This practice is expected to become more widespread,
especially because it puts brands and companies into the social media messaging platforms their customers already use to
communicate with others, it provides quicker-even instantaneous-responses, is economically scalable through the use of AI-

driven chatbots, and, despite the use of chatbots, can provide a more personalized level of customer service.

Another area that companies will greatly improve upon is data collection and analysis. While it is true that data collection on
social media is already pervasive today, it is also heavily scrutinized. However, we believe that companies will adapt to the
latest regulation changes (e.g., GDPR in Europe, CCPA in California) and improve on collecting and analyzing anonymized
data (Kakatkar and Spann 2018). Furthermore, even under these new regulations, personalized data collection is still allowed,
but severely limits firm’s abilities to exploit consumers’ data, and requires their consent for data collection.

We believe that in the future, companies will be able recognize early indications of problems within customer chatter, behavior,
or even physiological data (e.g., monitoring the sensors in our smart watches) before customers themselves even realize they
are experiencing a problem. For example, WeWork, the shared workspace company, collects data on how workers move and
act in a workspace, building highly personalized workspaces based on trends in the data. Taking this type of approach to
customer care will enable “seamless service,” where companies would be able to identify and address consumer problems
when they are still small and scattered, and while only a small number of customers are experiencing problems. Customer
healthcare is a pioneer in this area, where using twitter and review sites were shown to predict poor healthcare quality
(Greaves et al. 2013), listen to patients to analyze trending terms (Baktha et al. 2017; Padrez et al. 2016), or even predict
disease outbreaks (Schmidt 2012).

Companies, wanting to better understand and mimic human interactions, will invest a lot of R&D efforts into developing better
Natural Language Processing, voice and image recognition, emotional analysis, and speech synthesis tools (Sheth 2017). For
example, Duplex, Google’s latest AI assistant, can already call services on its own and seamlessly book reservations for their
users (Welch 2018). In the future, AI systems will act as human ability augmenters, allowing us to accomplish more, in less
time, and better results (Guszcza 2018).

For marketers, this will reduce the need for call centers and agents, reducing points of friction in service and increasing the
convenience for customers (Kaplan and Haenlein 2019). However, some raise the question that the increased dependence on
automation may result in a loss of compassion and empathy. In a recent study, Force (2018) shows that interacting with brands
on social media lowered people’s empathy. In response to such concerns, and to educate and incentivize people to interact
with machines in a similar way they do with people, Google programmed their AI assistant to respond in a nicer way if you use
a polite, rather than a commanding approach (Kumparak 2018). While this might help, more research is needed to understand
the effect of an AI rich world on human behavior. As well, future research can examine how consumer generated data can help
companies preemptively predict consumer distress. Another interesting path for research would be to better understand the
difference in consumer engagement between the various platforms, and the long-term effects of service communications with
non-human AI and IoT.

Social media as a political tool

Social media is a platform to share thoughts and opinions. This is especially true in the case of disseminating political
sentiments. Famously, President Barack Obama’s victory in the 2008 election was partially attributed to his ability to drive and
engage voters on social media (Carr 2008). Indeed, Bond et al. (2012) have shown that with simple interventions, social media
platforms can increase targeted audiences’ likelihood of voting. Social media is considered one of the major drivers of the 2010
wave of revolutions in Arab countries, also known as the Arab Spring (Brown et al. 2012).

While social media is not new to politics, we believe that social media is transitioning to take a much larger role as a political
tool in the intermediate future. First evidence for this could be seen in the 2016 U.S. presidential election, as social media took
on a different shape, with many purported attempts to influence voter’s opinions, thoughts, and actions. This is especially true
for then-candidate and now-President Donald Trump. His use of Twitter attracted a lot of attention during the campaign and
has continued to do so during his term in office. Yet, he is not alone, and many politicians changed the way they work and
interact with constituents, with a recent example of Congresswoman Alexandria Ocasio-Cortez that even ran a workshop for
fellow congress members on social media (Dwyer 2019).

While such platforms allow for a rapid dissemination of ideas and concepts (Bonilla and Rosa 2015; Bode 2016), there are
some, both in academia and industry that have raised ethical concerns about using social media for political purposes. Given
that people choose who to follow, this selective behavior is said to potentially create echo chambers, wherein, users are
exposed only to ideas by like-minded people, exhibiting increased political homophily (Bakshy et al. 2015). People’s preference
to group with like-minded people is not new. Social in-groups have been shown to promote social identification and promote in-
group members to conform to similar ideas (Castano et al. 2002; Harton and Bourgeois 2004). Furthermore, it was also shown
that group members strongly disassociate and distance themselves from outgroup members (Berger and Heath 2008; White
and Dahl 2007). Thus, it is not surprising to find that customized newsfeeds within social media exacerbate this problem by
generating news coverage that is unique to specific users, locking them in their purported echo chambers (Oremus 2016).

While social media platforms admit that echo chambers could pose a problem, a solution is not clear (Fiegerman 2018). One
reason that echo chambers present such a problem, is their proneness to fake news. Fake news are fabricated stories that try
to disguise themselves as authentic content, in order to affect other social media users. Fake news was widely used in the

2016 U.S. elections, with accusations that foreign governments, such as Iran and Russia, were using bots (i.e., online
automatic algorithms), to spread falsified content attacking Hillary Clinton and supporting President Trump (Kelly et al. 2018).
Recent research has furthermore shown how the Chinese government strategically uses millions of online comments to distract
the Chinese public from discussing sensitive issues and promote nationalism (King et al. 2017). In their latest incarnation, fake
news uses an advanced AI technique called “Deep Fake” to generate ultra-realistic forged images and videos of political
leaders while manipulating what those leaders say (Schwartz 2018). Such methods can easily fool even the sharpest viewer. In
response, research has begun to explore ways that social media platforms can combat fake news through algorithms that
determine the quality of shared content (e.g., Pennycook and Rand 2019).

One factor that has helped the rise of fake news is echo chambers. This occurs as the repeated sharing of fake news by group
members enhance familiarity and support (Schwarz and Newman 2017). Repetition of such articles by bots can only increase
that effect. Recent research has shown that in a perceived social setting, such as social media, participants were less likely to
fact-check information (Jun et al. 2017), and avoided information that didn’t fit well with their intuition (Woolley and Risen 2018).
Schwarz and Newman (2017) state that misinformation might be difficult to correct, especially if the correction is not issued
immediately and the fake news has already settled into the minds of users. It was also shown that even a single exposure to
fake news can create long term effect on users, making their effect larger than previously thought (Pennycook et al. 2019).

Notably, some research has found that exposure to opposing views (i.e., removing online echo chambers) may in fact increase
(versus decrease) polarization (Bail et al. 2018). Accordingly, more work from policy makers, businesses, and academics is
needed to understand and potentially combat political extremism. For example, policy makers and social media platforms will
continually be challenged to fight “fake news” without censoring free speech. Accordingly, research that weighs the risk of
limited freedom of expression versus the harms of spreading fake news would yield both theoretical and practically meaningful
insights.

The far future

In this section, we highlight three emerging trends we believe will have a have long-term influence on the future of social
media. Note that although we label these trends as being in the “far” future, many of the issues described here are already
present or emerging. However, they represent more complex issues that we believe will take longer to address and be of
mainstream importance for marketing than the six issues discussed previously under the immediate and near futures.

Increased sensory richness

In its early days, the majority of social media posts (e.g., on Facebook, Twitter) were text. Soon, these platforms allowed for the
posting of pictures and then videos, and separate platforms dedicated themselves to focus on these specific forms of media
(e.g., Instagram and Pinterest for pictures, Instagram and SnapChat for short videos). These shifts have had demonstrable
consequences on social media usage and its consequences as some scholars suggest that image-based posts convey greater
social presence than text alone (e.g., Pittman and Reich 2016). Importantly however, a plethora of new technologies in the
market suggest that the future of social media will be more sensory-rich.

One notable technology that has already started infiltrating social media is augmented reality (AR). Perhaps the most
recognizable examples of this are Snapchat’s filters, which use a device’s camera to superimpose real-time visual and/or video
overlays on people’s faces (including features such as makeup, dog ears, etc.). The company has even launched filters to
specifically be used on users’ cats (Ritschel 2018). Other social media players quickly joined the AR bandwagon, including
Instagram’s recent adoption of AR filters (Rao 2017) and Apple’s Memoji messaging (Tillman 2018). This likely represents only
the tip of the iceberg, particularly given that Facebook, one of the industry’s largest investors in AR technology, has confirmed it
is working on AR glasses (Constine 2018). Notably, the company plans to launch a developer platform, so that people can
build augmented-reality features that live inside Facebook, Instagram, Messenger and Whatsapp (Wagner 2017). These
developments are supported by academic research suggesting that AR often provides more authentic (and hence positive)
situated experiences (Hilken et al. 2017). Accordingly, whether viewed through glasses or through traditional mobile and tablet
devices, the future of social media is likely to look much more visually augmented.

While AR allows users to interact within their current environments, virtual reality (VR) immerses the user in other places, and
this technology is also likely to increasingly permeate social media interactions. While the Facebook-owned company Oculus
VR has mostly been focusing on the areas of immersive gaming and film, the company recently announced the launch of
Oculus Rooms where users can spend time with other users in a virtual world (playing games together, watching media
together, or just chatting; Wagner 2018). Concurrently, Facebook Spaces allows friends to meet online in virtual reality and
similarly engage with one another, with the added ability to share content (e.g., photos) from their Facebook profiles (Whigham
2018). In both cases, avatars are customized to represent users within the VR-created space. As VR technology is becoming
more affordable and mainstream (Colville 2018) we believe social media will inevitably play a role in the technology’s
increasing usage.

While AR and VR technologies bring visual richness, other developments suggest that the future of social media might also be

more audible. A new player to the social media space, HearMeOut, recently introduced a platform that enables users to share
and listen to 42-s audio posts (Perry 2018). Allowing users to use social media in a hands-free and eyes-free manner not only
allows them to safely interact with social media when multitasking (particularly when driving), but voice is also said to add a
certain richness and authenticity that is often missing from mere text-based posts (Katai 2018). Given that podcasts are more
popular than ever before (Bhaskar 2018) and voice-based search queries are the fastest-growing mobile search type (Robbio
2018), it seems likely that this communication modality will accordingly show up more on social media use going forward.

Finally, there are early indications that social media might literally feel different in the future. As mobile phones are held in one’s
hands and wearable technology is strapped onto one’s skin, companies and brands are exploring opportunities to communicate
to users through touch. Indeed, haptic feedback (technology that recreates the sense of touch by applying forces, vibrations, or
motions to the user; Brave et al. 2001) is increasingly being integrated into interfaces and applications, with purposes that go
beyond mere call or message notifications. For example, some companies are experimenting with integrating haptics into
media content (e.g., in mobile ads for Stoli vodka, users feel their phone shake as a woman shakes a cocktail; Johnson 2015),
mobile games, and interpersonal chat (e.g., an app called Mumble! translates text messages into haptic outputs; Ozcivelek
2015). Given the high levels of investment into haptic technology (it is predicted to be a $20 billion industry by 2022; Magnarelli
2018) and the communicative benefits that stem from haptic engagement (Haans and IJsselsteijn 2006), we believe it is only a
matter of time before this modality is integrated into social media platforms.

Future research might explore how any of the new sensory formats mentioned above might alter the nature of content creation
and consumption. Substantively-focused researchers might also investigate how practitioners can use these tools to enhance
their offerings and augment their interactions with customers. It is also interesting to consider how such sensory-rich formats
can be used to bridge the gap between the online and offline spaces, which is the next theme we explore.

Online/offline integration and complete convergence

A discussion occurring across industry and academia is on how marketers can appropriately integrate online and offline efforts
(i.e., an omnichannel approach). Reports from industry sources have shown that consumers respond better to integrated
marketing campaigns (e.g., a 73% boost over standard email campaigns; Safko 2010). In academia meanwhile, the majority of
research considering online promotions and advertisements has typically focused on how consumers respond to these
strategies through online only measures (e.g., Manchanda et al. 2006), though this has begun to change in recent years with
more research examining offline consequences to omnichannel strategies (Lobschat et al. 2017; Kumar et al. 2017).

Considering the interest in integrated marketing strategies over the last few years, numerous strategies have been utilized to
follow online and offline promotions and their impacts on behavior such as the usage of hashtags to bring conversations online,
call-to-actions, utilizing matching strategies on “traditional” avenues like television with social media. While there is currently
online/offline integration strategies in marketing, we believe the future will go even further in blurring the lines between what is
offline and online to not just increase the effectiveness of marketing promotions, but to completely change the way customers
and companies interact with one another, and the way social media influences consumer behavior not only online, but offline.

For brands, there are a number of possible trends in omnichannel marketing that are pertinent. As mentioned earlier, a notable
technology that has begun infiltrating social media is augmented reality (AR). In addition to what already exists (e.g.,
Snapchat’s filters, Pokémon Go), the future holds even more possibilities. For example, Ikea has been working to create an AR
app that allows users to take photos of a space at home to exactly , down to the millimeter size and lighting in the room,
showcase what a piece of furniture would look like in a consumer’s home (Lovejoy 2017). Another set of examples of AR
comes from beauty company L’Oréal. In 2014 for the flagship L’Oréal Paris brand they released a mobile app called Makeup
Genius that allowed consumers to virtually try on makeup on their phones (Stephen and Brooks 2018). Since then, they have
developed AR apps for hair color and nail polish, as well as integrating AR into mobile ecommerce webpages for their luxury
beauty brand Lancôme. AR-based digital services such as these are likely to be at the heart of the next stage of offline/online
integration.

AR, and similar technology, will likely move above and beyond being a tool to help consumers make better decisions about
their purchases. Conceivably, similar to promotions that currently exist to excitse consumers and create communities, AR will
be incorporated into promotions that integrate offline and online actions. For example, contests on social media will advance to
the stage where users get to vote on the best use of AR technology in conjunction with a brand’s products (e.g., instead of
users submitting pictures of their apartments to show why they should win free furniture, they could use AR to show how they
would lay out the furniture if they were to win it from IKEA).

Another way that the future of online/offline integration on social media needs to be discussed is in the sense of a digital self.
Drawing on the extended self in the digital age (Belk 2013), the way consumers consider online actions as relevant to their
offline selves may be changing. For example, Belk (2013) spoke of how consumers may be re-embodied through avatars they
create to represent themselves online, influencing their offline selves and creating a multiplicity of selves (i.e., consumers have
more choice when it comes to their self-representation). As research has shown how digital and social media can be used for
self-presentation, affiliation, and expression (Back et al. 2010; Gosling et al. 2007; Toubia and Stephen 2013; Wilcox and
Stephen 2012), what does it mean for the future if consumers can create who they want to be?

In addition, when considering digital selves, what does this mean for how consumers engage with brands and products?
Currently, social media practice is one where brands encourage consumer engagement online (Chae et al. 2017; Godes and
Mayzlin 2009), yet the implications for how these types of actions on the part of the brand to integrate online social media
actions and real-life behavior play out are unclear. Research has begun to delve into the individual-level consequences of a
consumer’s social media actions on marketing relevant outcomes (Grewal et al. 2019; John et al. 2017; Mochon et al. 2017;
Zhang et al. 2017), however much is still unknown. As well, while there is recent work examining how the device used to create
and view content online impacts consumer perceptions and behaviors (e.g., Grewal and Stephen 2019), to date research has
not examined these questions in the context of social media. Therefore, future research could address how digital selves (both
those held offline and those that only exist online), social media actions, and if the way consumers reach and use various
platforms (i.e., device type, app vs. webpage, etc.) impact consumer behavior, interpersonal relationships, and brand-related
measures (e.g., well-being, loyalty, purchase behaviors).

Social media by non-humans

The buzz surrounding AI has not escaped social media. Indeed, social bots (computer algorithms that automatically produce
content and interact with social media users; Ferrara et al. 2016) have inhabited social media platforms for the last decade
(Lee et al. 2011), and have become increasingly pervasive. For example, experts estimate that up to 15% of active Twitter
accounts are bots (Varol et al. 2017), and that percentage appears to be on the rise (Romano 2018). While academics and
practitioners are highly concerned with bot detection (Knight 2018), in the vast majority of current cases, users do not appear to
recognize when they are interacting with bots (as opposed to other human users) on social media (Stocking and Sumida 2018).
While some of these bots are said to be benign, and even useful (e.g., acting as information aggregators), they have also been
shown to disrupt political discourse (as mentioned earlier), steal personal information, and spread misinformation (Ferrara et al.
2016).

Of course, social bots are not only a problem for social media users but are also a nagging concern plaguing marketers. Given
that companies often assess marketing success on social media through metrics like Likes, Shares, and Clicks, the existence
of bots poses a growing threat to accurate marketing metrics and methods for ROI estimation, such as attribution modelling
(Bilton 2014). Similarly, when these bots act as “fake followers,” it can inflate the worth of influencers’ audiences (Bogost 2018).
This can also be used nefariously by individuals and firms, as shown in a New York Times Magazine expose that documented
the market used by some influencers to purchase such “fake” followers to inflate their social media reach (Confessore et al.
2018). As discussed above in relation to influencer marketing, where it has been commonplace for influencers to be paid for
posts at rates proportionate to their follower counts, there have been perverse incentives to game the system by having non-
human “fake” bot followers. This, however, erodes consumer trust in the social media ecosystem, which is a growing issue and
a near-term problem for many firms using social media channels for marketing purposes.

However, there are instances when consumers do know they are interacting with bots, and do not seem to mind. For example,
a number of virtual influencers (created with CGI, as mentioned earlier) seem to be garnering sizeable audiences, despite the
fact they are clearly non-human (Walker 2018). One of the most popular of these virtual influencers, Lil Miquela, has over 1.5
million followers on Instagram despite openly confessing, “I am not a human being.. I’m a robot” (Yurieff 2018). Future research
might try to understand the underlying appeal of these virtual influencers, and the potential boundary conditions of their
success.

Another category of social bots gaining increasing attention are therapy bots. These applications (e.g., “Woebot;” Molteni 2017)
aim to support the mental health of users by proactively checking in on them, “listening” and chatting to users at any time and
recommending activities to improve users’ wellbeing (de Jesus 2018). Similar bots are being used to “coach” users, and help
them quit maladaptive behaviors, like smoking (e.g., QuitGenius; Crook 2018). Interestingly, by being explicitly non-human,
these agents are perceived to be less judgmental, and might accordingly be easier for users to confide in.

Finally, the Internet of Things revolution has ushered in with it the opportunity for a number of tangible products and interfaces
to “communicate” via social media. For example, in what started as a design experiment, “Brad,” a connected toaster, was
given the ability to “communicate” with other connected toasters, and to tweet his “feelings” when neglected or under-used
(Vanhemert 2014). While this experiment was deliberately designed to raise questions about the future of consumer-product
relationships (and product-product “relationships”), the proliferation of autonomous tangible devices does suggest a future in
which they have a “voice,” even in the absence of humans (Hoffman and Novak 2018).

Going forward, we believe the presence of bots on social media will be more normalized, but also more regulated (e.g., a
recent law passed in California prevents bots from masquerading as humans; Smith 2018). Further, consumers and companies
alike will be become increasingly interested in how bots communicate and interact with each other outside of human
involvement. This brings up interesting potential research questions for academics and practitioners alike. How will the
presence of non-humans change the nature of content creation and conversation in social media? And how should companies
best account for the presence of non-humans in their attribution models?

Future research directions and conclusion

Time Theme Brief description of theme Suggested research directions and
example research questions

Immediate
future

Omni-social
presence

Consumers now live in a world in which most
aspects of their lives can potentially intersect with
social media and this digitally enabled social
interactivity is shaping culture itself.

* How will social interactivity influence
consumer behavior in areas that had
traditionally been non-social?

* How might marketers strategically
address the flatter decision-making
funnel that social media enables?

* How might service providers best
alter experiential consumption when
anticipating social media sharing?

The rise of
influencers

Prominent social media actors are leveraging their
influence to collaborate with brands. Companies
incorporate influencers into their marketing mix and
are creating “virtual influencers” of their own.

* What drives the appeal of live
influencer content?

* How can marketers strategically
identify and employ influencers as
part of the marketing mix?

* How virtual influencers affect
consumers’ perception of brands?

* Is there a difference between virtual
and real influencers in their effect on
consumers?

Privacy concerns on
social media

Consumer trust in social media is on the decline.
Consumers worry about the privacy of their data,
and this worry and distrust is transferring from just
the platforms to brands and companies.

* Who and what is trusted on social
media? What makes this trust higher
or lower?

* What can be done to win back
consumer trust on the part of the
platforms and brands?

This article has presented nine themes pertinent to the future of social media as it relates to (and is perhaps influenced by)
marketing. The themes have implications for individuals/consumers, businesses and organizations, and also public
policymakers and governments. These themes, which represent our own thinking and a synthesis of views from extant
research, industry experts, and popular public discourse, are of course not the full story of what the future of social media will
entail. They are, however, a set of important issues that we believe will be worth considering in both academic research and
marketing practice.

To stimulate future research on these themes and related topics, we present a summary of suggested research directions in
Table 2. These are organized around our nine themes and capture many of the suggested research directions mentioned
earlier. As a sub-field within the field of marketing, social media is already substantial and the potential for future research-
based on identified needs for new knowledge and answers to perplexing questions-suggests that this sub-field will become
even more important over time. We encourage researchers to consider the kinds of research directions in Table 2 as examples
of issues they could explore further. We also encourage researchers in marketing to treat social media as a place where
interesting (and often very new) consumer behaviors exist and can be studied. As we discussed earlier in the paper, social
media as a set of platform businesses and technologies is interesting, but it is how people use social media and the associated
technologies that is ultimately of interest to marketing academics and practitioners. Thus, we urge scholars to not be overly
enticed by the technological “shiny new toys” at the expense of considering the behaviors associated with those technologies
and platforms.

Suggested directions for future research

* Is there any way for consumers to
feel as though losing some data
privacy is worth it due to benefits?

Near
Future

Combating
loneliness and
isolation

There is conflicting research that exists regarding
social media’s role in causing consumer loneliness
and isolation, leading to calls to revolutionize how
social media is used.

* What about social media impacts
loneliness perceptions (e.g., quantity
of use, use type, platform)?

* Are there individual characteristics
correlated with social media use and
loneliness?

* Are there ways for social media
platforms to encourage more
meaningful connections vs. social
comparison?

Integrated customer
care

Social media, using improved analytics tools, and
unprecedented knowledge on consumers will allow
for an almost “invisible” customer care. Customers
will be able to interact with firms seamlessly from
almost any device.

* How can marketers preemptively
predict and respond to consumer
distress?

* Do customers engage and perceive
customer service differently on
different platforms (e.g., AI assistant,
chatbots, mobile messaging)?

* How will the increased interaction
with AI and IoT affect consumer
behavior?

Social Media as a
Political Tool

Social media is used by politicians to directly
engage with voters, evoking series of new
challenges for policymakers, such as increased
polarization, echo chambers, and fake news.

* What can be done to reduce
polarization in social media?

* What is the effect of eco chambers
on long term behaviors?

* How can we successfully identify
and negate the effects of fake news?

Far Future Increased Sensory
Richness

A plethora of new technologies, including
augmented reality, virtual reality, voice activation,
and haptic integration market suggest that the future
of social media will become increasingly sensory-
rich.

* How might these new sensory
formats alter the nature of content
creation and consumption?

* How might practitioners use these
tools to enhance their offerings and
augment their interactions with
customers?

* How might such sensory-rich
formats be used to bridge the gap
between the online and offline
spaces?

Online/Offline
Integration and
Complete
Convergence

The lines between what is offline and online are
blurring, changing how consumers interact with
other consumers, companies, and products and
experiences.

* How is tech like AR going to change
the way consumers interact with
brands, social media platforms, other
consumers, and offline experiences?

* What are some repercussions of
digital selves considering consumer
behavior and brand-related
measures?

* How do digital selves that differ from
offline personas, impact consumer
attitudes and behaviors?

Social Media by
Non-Humans

Artificial intelligence in the form of bots, virtual
influencers, and IoT devices will increasingly
permeate the social media sphere.

* How will the presence of non-
humans change the nature of content
creation and conversation in social
media?

* What is the underlying appeal of
virtual influencers?

* How should companies account for
the presence of non-humans in their
attribution models?

Finally, while we relied heavily (though not exclusively) on North American examples to illustrate the emergent themes, there
are likely interesting insights to be drawn by explicitly exploring cross-cultural differences in social media usage. For example,
variations in regulatory policies (e.g., GDPR in the European Union) may lead to meaningful differences in how trust and
privacy concerns manifest. Further, social media as a political tool might be more influential in regions where the mainstream
media is notoriously government controlled and censored (e.g., as was the case in many of the Arab Spring countries). While
such cross-cultural variation is outside the scope of this particular paper, we believe it represents an area of future research
with great theoretical and practical value.

In reviewing the social media ecosystem and considering where it is heading in the context of consumers and marketing
practice, we have concluded that this is an area that is very much still in a state of flux. The future of social media in marketing
is exciting, but also uncertain. If nothing else, it is vitally important that we better understand social media since it has become
highly culturally relevant, a dominant form of communication and expression, a major media type used by companies for
advertising and other forms of communication, and even has geopolitical ramifications. We hope that the ideas discussed here
stimulate many new ideas and research, which we ultimately hope to see being mentioned and shared across every type of
social media platform.

Acknowledgements

The authors thank the special issue editors and reviewers for their comments, and the Oxford Future of Marketing Initiative for
supporting this research. The authors contributed equally and are listed in alphabetical order or, if preferred, order of Marvel
superhero fandom from highest to lowest and order of Bon Jovi fandom from lowest to highest.

References

Aguirre, E, Mahr, D, Grewal, D, Ruyter, KD, Wetzels, M: Unraveling the personalization paradox: The effect of information
collection and trust-building strategies on online advertisement effectiveness. vol. 91, issue 1, pp. 34-59. Journal of Retailing
(2015)

American Psychological Association. (2011). Social networking’s good and bad impacts on kids . American Psychological
Association.

Babic Rosario, A, Sotgiu, F, De Valck, K, Bijmolt, THA: The effect of electronic word of mouth on sales: A meta-analytic review
of platform, product, and metric factors. vol. 53, issue 3, pp. 297-318. Journal of Marketing Research (2016)

Back, M, Stopfer, J, Vazire, S, Gaddis, S, Schmukle, S, Egloff, B, Gosling, S: Facebook profiles reflect actual personality, not
self-idealization. vol. 21, issue 3, pp. 372-374. Psychological Science (2010)

Bail, CA, Argyle, LP, Brown, TW, Bumpus, JP, Chen, H, Hunzaker, MF, Lee, J, Mann, M, Merhout, F, Volfovsky, A: Exposure

to opposing views on social media can increase political polarization. vol. 115, issue 37, pp. 9216-9221. Proceedings of the
National Academy of Sciences (2018)

Baker, DA, Algorta, GP: The relationship between online social networking and depression: A systematic review of quantitative
studies. vol. 19, issue 11, pp. 638-648. Cyberpsychology, Behavior and Social Networking (2016)

Bakshy, E, Messing, S, Adamic, LA: Exposure to ideologically diverse news and opinion on Facebook. vol. 348, issue 6239,
pp. 1130-1132. Science (2015)

Baktha, K., Dev, M., Gupta, H., Agarwal, A., & Balamurugan, B. (2017). Social network analysis in healthcare. In Internet of
Things and Big Data Technologies for Next Generation Healthcare (pp. 309-334). Springer, Cham.

Belk, RW: Extended self in a digital world. vol. 40, issue October, pp. 477-500. Journal of Consumer Research (2013)

Bereznak, A. (2018). A Meme Is Born: How Internet Jokes Turned ‘A Star Is Born’ Into a Hit. Retrieved from

.

https://tinyurl.com/y7b9xfym

Berger, J, Heath, C: Who drives divergence? Identity signaling, outgroup dissimilarity, and the abandonment of cultural tastes.
vol. 95, issue 3, pp. 593-607. Journal of Personality and Social Psychology (2008)

Bhaskar, S. (2018). How Podcasts Became So Popular (And Why That’s a Good Thing). Retrieved from

.

https://tinyurl.com/yczfmzue

Bilton, N. (2014). Social media bots offer phony friends and real profit. Retrieved from

.

https://tinyurl.com/y93z3wdj

Bode, L: Political news in the news feed: Learning politics from social media. vol. 19, issue 1, pp. 24-48. Mass Communication
and Society (2016)

Bogost, I. (2018). All followers are fake followers. Retrieved from

.

https://tinyurl.com/ybxblkek

Bond, RM, Fariss, CJ, Jones, JJ, DI Kramer, A, Marlow, C, Settle, JE, Fowler, JH: A 61-million-person experiment in social
influence and political mobilization. vol. 489, issue 7415, pp. 295-298. Nature (2012)

Bonilla, Y, Rosa, J: # Ferguson: Digital protest, hashtag ethnography, and the racial politics of social media in the United
States. vol. 42, issue 1, pp. 4-17. American Ethnologist (2015)

Brave, S., Nass C., & Sirinian E. (2001). Force-feedback in computer-mediated communication. Proceedings of HCI
International 2001 (9 th International Conference on Human-Computer Interaction , Constantine Stephanidis, Hillsdale, NJ:
Lawrence Erlbaum), 145-149.

Brown, H., Guskin, E., & Mitchell A. (2012). The role of social Media in the Arab Uprising. Retreived from

.

https://tinyurl.com/y7d8t7je

Carr, D. (2008) How Obama Tapped into Social Networks’ Power. Retrieved from

.

https://tinyurl.com/ydyvtocj

Castano, E, Yzerbyt, V, Paladino, MP, Sacchi, S: I belong, therefore, I exist: Ingroup identification, ingroup entitativity, and
ingroup bias. vol. 28, issue 2, pp. 135-143. Personality and Social Psychology Bulletin (2002)

Chae, I, Stephen, AT, Bart, Y, Yao, D: Spillover effects in seeded word-of-mouth marketing campaigns. vol. 36, issue 1, pp.
89-104. Marketing Science (2017)

Chang, Y., Li, Y., Yan, J., & Kumar, V. (2019). Getting more likes: The impact of narrative person and brand image on
customer-brand interactions. Journal of the Academy of Marketing Science , 1-19.

Cheng, E. (2017). China is living the future of mobile pay right now. Retrieved from

.

https://tinyurl.com/y8hm6vlo

Chowdry, A., (2018). Facebook launches ads in marketplace. Retrieved from

.

https://tinyurl.com/y8kf5g4t

Chung, TS, Wedel, M, Rust, RT: Adaptive personalization using social networks. vol. 44, pp. 66-87. Journal of the Academy of
Marketing Science (2016)

Cigna (2018). New Cigna Study Reveals Loneliness at Epidemic Levels in American. Retrieved from

.

https://tinyurl.com/y9e7gl2u

Colville W. (2018). Facebook VR leader talk about the future of virtual marketing. Retrieved from

.

https://tinyurl.com/y8kdd4cr

Comm J. (2016). 9 Social media influencers who are killing it on TV. Retrieved from

.

https://tinyurl.com/y76wyo8j

Confessore, N., Dance, G. J. X., Harris, R., & Hansen, M. (2018). The Follower Factory. Retrieved from

.

https://tinyurl.com/yaym3e69

Constine, J. (2018). Facebook confirms its building augmented reality glasses. Retrieved from

.

https://tinyurl.com/y82et9tw

Cortizo-Burgess, P. (2014). The traditional purchase funnel is kaput. Retrieved from
https://tinyurl.com/y7azj7oc

.

Crolic, C., Stephen, A. T., Zubcsek, P. P., & Brooks, G. (2019). Staying connected: The positive effect of social media
consumption on psychological well-being. Working Paper.

Crook, J. (2018). Quit Genius, backed by Y combinator, wants to help you quit smoking. Retrieved from

.

https://tinyurl.com/y7hhfzf8

Culnan, MJ, Williams, CC: How ethics can enhance organization privacy: Lessons from the choice point and TJX data
breaches. vol. 33, pp. 673-687. MIS Quarterly (2009)

de Jesus, A. (2018). Chatbots for mental health and therapy – Comparing 5 current apps and use cases. Retrieved from

.

https://tinyurl.com/yc5c6qco

Dequier, S. (2018). Everything You Need to Know about Apple Business Chat (and what to expect from it). Retrieved from

.

https://tinyurl.com/yd4dmtgw

Duani, N., Barasch, A., & Ward A. (2018). “Brought to you live”: On the consumption experience of live social media streams.
Working paper.

Dwyer, D., (2019). Alexandria Ocasio-Cortez’s Twitter lesson for House Democrats. Retrieved from

.

https://tinyurl.com/ydgy9suw

Edelman, K. (2018). Trust Barometer Brands Social Media. Retrieved from

.

https://tinyurl.com/ycrm23gf

eMarketer (2018). Social Network Users and Penetration in Worldwide. Retrieved from

.

https://tinyurl.com/ycr2d3v9

Enberg, J. (2018). Global Influencer Marketing. Retrieved from

.

https://tinyurl.com/y7srumpm

Facebook (2019). Company Info. Retrieved from

.

https://tinyurl.com/n544jrt

Ferrara, E, Varol, O, Davis, C, Menczer, F, Flammini, A: The rise of social bots. vol. 59, issue 7, pp. 96-104. Communications
of the ACM (2016)

Fiegerman, S. (2018). Facebook admits social media can ‘corrode democracy’. Retrieved from

.

https://tinyurl.com/y9f7hxju

Fossen, BL, Schweidel, DA: Television advertising and online word-of-mouth: An empirical investigation of social TV activity.
vol. 36, issue 1, pp. 105-123. Marketing Science (2016)

Fossen, BL, Schweidel, DA: Social TV, advertising, and sales: Are social shows good for advertisers?. vol. 38, issue 2, pp.
274-295. Marketing Science (2019)

Godes, D, Mayzlin, D: Firm-created word-of-mouth communication: Evidence from a field test. vol. 28, issue 4, pp. 721-739.
Marketing Science (2009)

Gordon, BR, Zettelmeyer, F, Bhargava, N, Chapsky, D: A comparison of approaches to advertising measurement: Evidence
from big field experiments at Facebook. vol. 38, issue 2, pp. 193-225. Marketing Science (2019)

Gosling, S., Gaddis, S., & Vazire, S. (2007). Personality Impressions Based on Facebook Profiles. ICWSM , 1-4.

Greaves, F, Ramirez-Cano, D, Millett, C, Darzi, A, Donaldson, L: Harnessing the cloud of patient experience: Using social
media to detect poor quality healthcare. vol. 22, issue 3, pp. 251-255. BMJ Quality and Safety (2013)

Grewal, L., & Stephen, A. T. (2019). In mobile we trust: The effects of mobile versus nonmobile reviews on consumer purchase
intentions. Journal of Marketing Research, 56 (5), 791-808.

Grewal, L, Stephen, AT, Coleman, NV: When posting about products in social media backfires: The negative effects of
consumer identity-signaling on product interest. vol. 56, issue 2, pp. 197-210. Journal of Marketing Research (2019)

Guszcza, J: Smarter together. vol. 22, pp. 36-45. Deloitte Review (2018)

Haans, A, IJsselsteijn, W: Mediated social touch: A review of current research and future directions. vol. 9, issue 2, pp.
149-159. Virtual Reality (2006)

Haenlein, M: How to date your clients in the 21st century: Challenges in managing customer relationships in today’s world. vol.
60, pp. 577-586. Business Horizons (2017)

Harton, H. C., & Bourgeois, M. J. (2004). Cultural elements emerge from dynamic social impact. The Psychological
Foundations of Culture , 41-75.

Hennig-Thurau, T, Gwinner, KP, Walsh, G, Gremler, DD: Electronic word-of-mouth via consumer-opinion platforms: What
motivates consumers to articulate themselves on the internet?. vol. 18, issue 1, pp. 38-52. Journal of Interactive Marketing
(2004)

Hennig-Thurau, T, Wiertz, C, Feldhaus, F: Does twitter matter? The impact of microblogging word of mouth on consumers’
adoption of new movies. vol. 43, issue 3, pp. 375-394. Journal of the Academy of Marketing Science (2015)

Herhausen, D, Ludwig, S, Grewal, D, Wulf, J, Schoegel, M: Detecting, preventing, and mitigating online firestorms in brand
communities. vol. 83, issue 3, pp. 1-21. Journal of Marketing (2019)

Hilken, T, de Ruyter, K, Chylinski, M, Mahr, D, Keeling, DI: Augmenting the eye of the beholder: Exploring the strategic
potential of augmented reality to enhance online service experiences. vol. 45, issue 6, pp. 884-905. Journal of the Academy of
Marketing Science (2017)

Hoffman, DL, Novak, TP: Consumer and object experience in the internet of things: An assemblage theory approach. vol. 44,

issue 6, pp. 1178-1204. Journal of Consumer Research (2018)

Hollenbeck, CR, Kaikati, AM: Consumers’ use of brands to reflect their actual and ideal selves on Facebook. vol. 29, issue 4,
pp. 395-405. International Journal of Research in Marketing (2012)

Hunt, MG, Marx, R, Lipson, R, Young, J: No more FOMO: Limiting social media decreases loneliness and depression. vol. 37,
issue 10, pp. 751-768. Journal of Social and Clinical Psychology (2018)

Information Technology Faculty (2018). Building Trust in the Digital Age Report. Retrieved from

.

https://tinyurl.com/y9rkxbxu

John, LK, Emrich, O, Gupta, S, Norton, MI: Does “liking” lead to loving? The impact of joining a brand’s social network on
marketing outcomes. vol. 54, issue 1, pp. 144-155. Journal of Marketing Research (2017)

Johnson, L. (2015). Stoli’s Mobile Ads Let You Actually Feel a Cocktail Being Made in Your Hand. Retrieved from

.

https://tinyurl.com/y72uud3c

Jun, Y, Meng, R, Johar, GV: Perceived social presence reduces fact-checking. vol. 114, issue 23, pp. 5976-5981. Proceedings
of the National Academy of Sciences (2017)

Kakatkar, C, Spann, M: Marketing analytics using anonymized and fragmented tracking data. vol. 36, issue 1, pp. 117-136.
International Journal of Research in Marketing (2018)

Kaplan, A, Haenlein, M: Siri, Siri, in my hand: Who’s the fairest in the land? On the interpretations, illustrations, and implications
of artificial intelligence. vol. 62, issue 1, pp. 15-25. Business Horizons (2019)

Katai L. (2018). 3 Reasons why audio will conquer all social media. Retrieved from

.

https://tinyurl.com/y9q6bvjr

Kelly, H., Horowitz, J., O’Sullivan, D. (2018). Facebook takes down 652 pages after finding disinformation campaigns run from
Iran and Russia. Retrieved from

.

https://tinyurl.com/ybte3bp4

Kim, J, LaRose, R, Peng, W: Loneliness as the cause and the effect of problematic internet use: The relationship between
internet use and psychological well-being. vol. 12, issue 4, pp. 451-455. Cyberpsychology & Behavior (2009)

King, G, Pan, J, Roberts, ME: How the Chinese government fabricates social media posts for strategic distraction, not engaged
argument. vol. 111, issue 3, pp. 484-501. American Political Science Review (2017)

Knight, T. (2018). How to tell if you are talking to a bot. Retrieved from

.

https://tinyurl.com/ycamg4p8

Knoll, J, Matthes, J: The effectiveness of celebrity endorsements: A meta-analysis. vol. 45, issue 1, pp. 55-75. Journal of the
Academy of Marketing Science (2017)

Kross, E, Verduyn, P, Demiralp, E, Park, J, Lee, DS, Lin, N, Shablack, H, Jonides, J, Ybarra, O: Facebook use predicts
declines in subjective well-being in young adults. vol. 8, issue 8. PLoS One (2013)

Kumar, V, Choi, JB, Greene, M: Synergistic effects of social media and traditional marketing on brand sales: Capturing the
time-varying effects. vol. 45, issue 2, pp. 268-288. Journal of the Academy of Marketing Science (2017)

Kumparak, G. (2018). Google Assistant will now be nicer if you say ‘Please’ and ‘Thank you’. Retrieved from

.

https://tinyurl.com/ybcfdztv

Lamberton, C, Stephen, AT: A thematic exploration of digital, social media, and mobile marketing research’s evolution from
2000 to 2015 and an agenda for future research. vol. 80, issue 6, pp. 146-172. Journal of Marketing (2016)

Lee, K., Eoff, B.D., & Caverlee, J. (2011), Seven months with the devils: A long-term study of content polluters on twitter. In
Proceedings of the 5th International AAAI Conference on Weblogs and Social Media, 185-192.

Lobschat, L, Osinga, EC, Reinartz, WJ: What happens online stays online? Segment-specific online and offline effects of
banner advertisements. vol. 54, issue 6, pp. 901-913. Journal of Marketing Research (2017)

Lovejoy, B. (2017). Ikea to be Apple launch partner for AR, showing virtual furniture in your own home. Retrieved from

.

https://tinyurl.com/yarzpz8n

Magnarelli, M. (2018). The Next Marketing Skill You Need to Master: Touch. Retrieved from

.

https://tinyurl.com/y7tybx4d

Main, S. (2017). Micro-Influencers Are More Effective with Marketing Campaigns Than Highly Popular Accounts. Retrieved
from

.

https://tinyurl.com/moww4p4

Manchanda, P, Dubé, JP, Goh, KY, Chintagunta, PK: The effect of banner advertising on internet purchasing. vol. 43, issue 1,
pp. 98-108. Journal of Marketing Research (2006)

Marche. T. (2012). Is Facebook making us lonely? Retrieved from

.

https://tinyurl.com/ybyje7ol

Marker, C., Gnambs, T., & Appel, M. (2018). Active on Facebook and failing at school? Meta-analytic findings on the
relationship between online social networking activities and academic achievement. Educational Psychology Review , 651-677.

Martin, K: The penalty for privacy violations: How privacy violations impact trust online. vol. 82, pp. 103-116. Journal of
Business Research (2018)

Martin, KD, Murphy, PE: The role of data privacy in marketing. vol. 45, issue 2, pp. 135-155. Journal of the Academy of
Marketing Science (2017)

Martin, KD, Borah, A, Palmatier, RW: Data privacy: Effects on customer and firm performance. vol. 81, issue 1, pp. 36-58.
Journal of Marketing (2017)

Maxim (2018). Every Selena Gomez Instagram post for puma is worth $3.4 million. Retrieved from

.

https://tinyurl.com/ybr6nzok

McClure, E. (2015). 11 Youtube Stars with Makeup Collections We Can’t Get Enough Of. Retrieved from

.

https://tinyurl.com/ybwzz6mm

Mejia, Z., (2018). Kylie Jenner reportedly makes $1 million per paid Instagram post-here’s how much other top influencers get.
Retrieved from

.

https://tinyurl.com/y7khetcu

Mochon, D, Johnson, K, Schwartz, J, Ariely, D: What are likes worth? A Facebook page field experiment. vol. 54, issue 2, pp.
306-317. Journal of Marketing Research (2017)

Molteni, S., (2017). The Chatbot Therapist Will See You Now. Retrieved from

.

https://tinyurl.com/y8g9b3oq

Nill, A, Aalberts, RJ: Legal and ethical challenges of online behavioral targeting in advertising. vol. 35, pp. 126-146. Journal of
Current Issues and Research in Advertising (2014)

Nolan, H. (2018), Brands are creating virtual influencers, Which could make the Kardashians a thing of the past. Retrieved from

.

https://tinyurl.com/y7gu7t26

Orben, A, Dienlin, T, Przybylski, AK: Social media’s enduring effect on adolescent life satisfaction. vol. 116, issue 21, pp.
10226-10228. Proceedings of the National Academy of Sciences (2019)

Oremus, W. (2016). Who Controls Your Facebook Feed. Retrieved from

.

https://tinyurl.com/y745c2ap

Ozcivelek, A. (2015). The future of wearable tech. Retrieved from

.

https://tinyurl.com/y88kf554

Padrez, KA, Ungar, L, Schwartz, HA, Smith, RJ, Hill, S, Antanavicius, T, Brown, DM, Crutchley, P, Asch, DA, Merchant, RM:
Linking social media and medical record data: A study of adults presenting to an academic, urban emergency department. vol.
25, issue 6, pp. 414-423. BMJ Quality and Safety (2016)

Pardes, A. (2017). Selfie Factories: The rise of the Made-for-Instagram Museum. Retrieved from

.

https://tinyurl.com/ycqswbz2

Pennycook, G, Rand, DG: Fighting misinformation on social media using crowdsourced judgments of news source quality. vol.
116, issue 7, pp. 2521-2526. Proceedings of the National Academy of Sciences (2019)

Pennycook, G, Cannon, TD, Rand, DG. Prior exposure increases perceived accuracy of fake news. Journal of Experimental
Psychology. General (2019)

Perry, E. (2018). Meet HearMeOut: the social media platform looking to bring audio back into the mainstream. Retrieved from

.

https://tinyurl.com/y8yxbzah

Pittman, M, Reich, B: Social media and loneliness: Why an Instagram picture may be worth more than a thousand twitter
words. vol. 62, pp. 155-167. Computers in Human Behavior (2016)

Priday, R. (2018). How to use Instagram and Facebooks new time limit tools. Retrieved from

.

https://tinyurl.com/y8allnxe

Primack, BA, Shensa, A, Sidani, JE, Whaite, EO, Lin, LY, Rosen, D, Colditz, JB, Radovic, A, Miller, E: Social media use and
perceived social isolation among young adults in the US. vol. 53, issue 1, pp. 1-8. American Journal of Preventive Medicine
(2017)

Rao, L., (2017). Instagram Copies Snapchat Once Again with Face Filters. Retrieved from

.

https://tinyurl.com/ybcuxxdv

Ritschel, C. (2018). Snapchat Introduces New Filters for Cats. Retrieved from

.

https://tinyurl.com/y8shdhpl

Robbio, A. (2018). The hyper-adoption of voice technology. Retrieved from

.

https://tinyurl.com/y9zzqpan

Romano, A. (2018). Two-thirds of links on twitter come from bots. The good news? They’re Mostly Bland. Retrieved from

.

https://tinyurl.com/y8hpyldc

Safko, L. (2010). The social media bible: Tactics, tools, and strategies for business success. John Wiley & Sons.

Schmidt, C. W. (2012). Trending now: Using social media to predict and track disease outbreaks.

Schwartz, O. (2018). You thought fake news was bad? Deep fakes are where truth goes to die. Retrieved from

.

https://tinyurl.com/y7mcrysq

Schwarz, N., & Newman, E. J. (2017). How does the gut know truth? Psychological Science Agenda, 31 (8).

Shakya, HB, Christakis, NA: Association of Facebook use with compromised well-being: A longitudinal study. vol. 185, issue 3,
pp. 203-211. American Journal of Epidemiology (2017)

Sheth, J: The future history of consumer research: Will the discipline rise to the opportunity?. vol. 45, pp. 17-20. Advances in
Consumer Research (2017)

Smith, A. (2018). California Law Bans Bots from Pretending to Be Human. Retrieved from

.

https://tinyurl.com/y78qdkpu

Steers, MLN, Wickham, RE, Acitelli, LK: Seeing everyone else’s highlight reels: How Facebook usage is linked to depressive
symptoms. vol. 33, issue 8, pp. 701-731. Journal of Social and Clinical Psychology (2014)

Stephen, A. T. & G. Brooks (2018). L’Oréal Paris Makeup Genius. Saïd Business School Case Study, University of Oxford.

Stephen, AT, Galak, J: The effects of traditional and social earned media on sales: A study of a microlending marketplace. vol.
49, issue 5, pp. 624-639. Journal of Marketing Research (2012)

Stephen, AT, Lehmann, DR: How word-of-mouth transmission encouragement affects consumers’ transmission decisions,
receiver selection, and diffusion speed. vol. 33, issue 4, pp. 755-766. International Journal of Research in Marketing (2016)

Stewart, DW: A comment on privacy. vol. 45, issue 2, pp. 156-159. Journal of the Academy of Marketing Science (2017)

Stocking, G. & Sumida, N. (2018). Social Media Bots Draw Public’s Attention and Concern. Retrieved from

.

https://tinyurl.com/ybabbeu4

Tillman, M. (2018). What are Memoji? How to create an Animoji that looks like you. Retrieved from

.

https://tinyurl.com/yakqjqdf

Toubia, O, Stephen, AT: Intrinsic vs. image-related utility in social media: Why do people contribute content to twitter?. vol. 32,
issue 3, pp. 368-392. Marketing Science (2013)

Trusov, M, Bucklin, RE, Pauwels, T: Effects of word-of mouth versus traditional marketing: Findings from an internet social
networking site. vol. 73, issue 5, pp. 90-102. Journal of Marketing (2009)

Tucker, CE: Social networks, personalized advertising and privacy controls. vol. 51, issue 5, pp. 546-562. Journal of Marketing
Research (2014)

Vanhemert, K. (2014). Needy robot toaster sells itself if neglected. Retrieved from

.

https://bit.ly/2ROGvt3

Varol. O., Ferrara, E., Davis, C. A., Menczer, F., & Flammini, A. (2017). Online Human-Bot Interactions: Detection, Estimation
and Characterization. Retrieved from

.

https://arxiv.org/abs/1703.03107

Villarroel Ordenes, F, Ludwig, S, De Ruyter, K, Grewal, D, Wetzels, M: Unveiling what is written in the stars: Analyzing explicit,
implicit, and discourse patterns of sentiment in social media. vol. 43, issue 6, pp. 875-894. Journal of Consumer Research
(2017)

Villarroel Ordenes, F, Grewal, D, Ludwig, S, Ruyter, KD, Mahr, D, Wetzels, M: Cutting through content clutter: How speech and
image acts drive consumer sharing of social media brand messages. vol. 45, issue 5, pp. 988-1012. Journal of Consumer
Research (2018)

Wagner, K. (2017). Mark Zuckerberg, In His Own Words, On why AR is Facebook’s next big platform bet. Retrieved from

.

https://tinyurl.com/yagf24e4

Wagner, K. (2018). Oculus Go, the virtual reality headset Facebook hopes will bring VR to the mainstream, is finally here.
Retrieved from

.

https://tinyurl.com/ycnz468q

Walker, H. (2018). Meet Lil Miquela, the Instagram star created by CGI. Retrieved from

.

https://tinyurl.com/yc32k25l

Wallace, E, Buil, I, de Chernatony, L, Hogan, M: Who “Likes” You. and Why? A Typology of Facebook Fans. vol. 54, issue 1,
pp. 92-109. Journal of Advertising Research (2014)

Welch, C., (2018). How to use Google Duplex to make a restaurant reservation. Retrieved from

.

https://tinyurl.com/yaup796a

Whigham, N. (2018). The way we hang out on social media could look (and feel) very different soon. Retrieved from

.

https://tinyurl.com/ycs3efqv

White, K, Dahl, DW: Are all out-groups created equal? Consumer identity and dissociative influence. vol. 34, issue 4, pp.
525-536. Journal of Consumer Research (2007)

White, TB, Zahay, DL, Thorbjørnsen, H, Shavitt, S: Getting too personal: Reactance to highly personalized email solicitations.
vol. 19, issue 1, pp. 39-50. Marketing Letters (2008)

Wilcox, K, Stephen, AT: Are close friends the enemy? Online social networks, self-esteem, and self-control. vol. 40, issue 1,
pp. 90-103. Journal of Consumer Research (2012)

Woolley, K, Risen, JL: Closing your eyes to follow your heart: Avoiding information to protect a strong intuitive preference. vol.
114, issue 2, pp. 230-245. Journal of Personality and Social Psychology (2018)

Xu, H, Teo, HH, Tan, BCY, Agarwal, R: Effects of individual self-protection industry self-regulation, and government regulation
on privacy concerns: A study of location based services. vol. 23, pp. 1342-1363. Information Systems Research (2012)

Yurieff, K. (2018). Instagram star isn’t what she seems. But brands are buying in. Retrieved from
https://tinyurl.com/ycqnf72c

.

Zhang, Y, Trusov, M, Stephen, AT, Jamal, Z: Online shopping and social media: Friends or foes?. vol. 81, issue 6, pp. 24-41.
Journal of Marketing (2017)

Article notes:

Publisher’s note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Copyright: COPYRIGHT 2020 Springer
http://www.springerlink.com/content/0092-0703

Source Citation
Appel, Gil, et al. “The future of social media in marketing.” Journal of the Academy of Marketing Science, vol. 48, no. 1, Jan. 2020,

pp. 79+. Gale OneFile: Communications and Mass Media,
link.gale.com/apps/doc/A610971747/PPCM?u=miam11506&sid=bookmark-PPCM&xid=0196002d. Accessed 4 Feb. 2022.

Gale Document Number: GALE|A610971747

http://www.springerlink.com/content/0092-0703

Forster 17

Advertising on Social Network Sites:
A Structural Equation Modelling Approach

Anant Saxena
Uday Khanna

Abstract
Social networking sites (SNSs) emerged as one of the most powerful media for advertising across the globe. Globally, companies
are shifting a larger pie of their advertising budgets towards social networking sites for better reach and interactive platform. The
companies are also looking at it as a low-cost model, which could reap results in minimum time possible for the targeted ‘Facebook
generation’. These very facts motivate researchers to study the value of advertisements on social networking sites like Facebook,
LinkedIn, Twitter and others. The article is an empirical study to understand the implications of different variables in advertisements
on the delivery of advertising value to the respondents. Confirmatory factor analysis (CFA) has been conducted to test the reliability
of instrument being used for data collection. Further, a model has been proposed for measuring advertising value through structural
equation modelling. The predicted results confirm the roles of different variables, namely, information, entertainment and irritation, in
accessing value of advertisements displayed on social networking sites.

Key Words
Advertising Value, Social Networking Sites, Structural Equation Modelling

Introduction
Social networking websites (SNSs) have emerged as the
‘need of an hour’. Their journey started with the launch of
sixdegrees.com in the year 1997, which attracted millions
of users at that time. The site allowed the users to create
profiles listing their friends with the ability to surf the
friends list (Boyd and Ellison, 2007). This has been
followed by an array of SNSs like Facebook, Orkut,
Linkedin and MySpace in the year 2003–2004. Within a
short span of time, these websites become an addiction for
youngsters as these give them opportunity and platform to
express their feelings and emotions in the society. Websites
like Facebook, Orkut, Twitter and MySpace have become
household names and an integral part of people’s life so
much that it has become tough for regular users to imagine
a life without them. Globally, Internet users spend more
than four and a half hours per week on SNSs, more time
than they spend on e-mail (Anderson et al., 2011). As
more and more of what people think and do ends up getting
expressed on SNSs, it is expected that SNSs affect the
buying decisions greatly. In addition, the huge viewer’s
base of these websites makes them a favourable media for
advertisements by different companies. According to a
study done by comScore, Inc., a market research firm,
SNSs accounted for more than 20 per cent, that is, one in

five, display ads of all display ads viewed online, with
Facebook and MySpace combining to deliver more than 80
per cent of ads among sites in the social networking
category (comScore, 2009). According to Rizavi et al.
(2011) social networking websites act as a good platform
for advertising that attract millions of users from different
countries, speaking multiple languages belonging to
different demographics. According to Trusov et al. (2009)
referrals and recommendations on SNSs have a significant
impact on new customer acquisition and retention. This
fact led marketers to turn to Internet platforms like SNSs,
blogs and other social media as an avenue for cost-effective
marketing, employing e-mail campaigns, website adver-
tisements and viral marketing. Also from a marketing
perspective, these websites give potential customers the
opportunity to virtually explore a business, encourage
them to visit and at last share their views and experiences
with their friends (Phillips et al., 2010). Understanding
the effectiveness of SNSs in promoting product and
services through advertisements, companies across the
globe have increased their advertising budget for SNSs
which has led to increase in revenue generation for social
networking website companies. According to a report
released by Interactive Advertising Bureau (IAB),
Internet advertising revenues totaled $14.9 billion in 2011,
up 23 per cent from the $12.1 billion reported in 2010

Vision
17(1) 17–25
© 2013 MDI

SAGE Publications
Los Angeles, London,

New Delhi, Singapore,
Washington DC

DOI: 10.1177/0972262912469560
http://vision.sagepub.com

Article

http://crossmark.crossref.org/dialog/?doi=10.1177%2F0972262912469560&domain=pdf&date_stamp=2013-03-06

18 Advertising on Social Network Sites

Vision, 17, 1 (2013): 17–25

(PricewaterhouseCoopers LLP., 2011). India shares the
same story in terms of Internet advertising revenues.

According to a report, the size of Internet advertising
industry was INR 7.7 billion in 2010 registering a
growth of 28.3 per cent over INR 6 billion in 2009
(PricewaterhouseCoopers Private Limited, 2011). The
same report highlights that in India SNSs have shown a
remarkable growth of 43 per cent in 2010 over 2009,
with a 54 per cent growth in advertising on SNSs in 2010–
2011 (PricewaterhouseCoopers Private Limited, 2011).
Considering the fact that advertising on SNSs is on a new
high, this research focus on studying the value of
advertisements being displayed on SNSs.

Literature Review and Hypothesis
Web advertising continues to be a major area of advertising
research from a long time. A number of studies have been
done discussing advertisements on the Web and their
effects. Berthon et al. (1996) have discussed the role of
World Wide Web as an advertising medium in the mar-
keting communication mix and proved that World Wide
Web is a new medium for advertising characterized by
ease-of-entry, relatively low set-up costs, globalness, time
independence and interactivity. In spite of the acceptance
of World Wide Web as an effective media for advertising,
few studies have focused on the value of advertisements
displayed on this medium. R.H. Ducoffe introduced the
concept of advertisement value in 1995. According to
Ducoffe (1995) advertising value is defined as the utility or
worth of the advertisement. Ducoffe (1996), in his another
study on World Wide Web, proved the significant impact
(either +ve or –ve) of entertainment, information and
irritation on advertisement value. Brackett and Carr (2001)
in their study on cyberspace advertising reports that
information, entertainment, irritation and credibility
significantly affect advertisement value which in turn
affects attitude towards advertisements. Discussion on
different predictors of advertisement value with reference
to SNSs advertisements is hereby illustrated:

1. Information: Information content is an important
determinant of advertisement effectiveness. Comp-
anies advertise for one main reason—providing
information about their product, services and brand
to consumers. Consumers reported that supplying
information is the primary reason why they approve
advertising (Bauer et al., 1968). According to Norris
(1984) information in advertisements enables the
customers to evaluate the products more rationally
leading to improved markets with low prices and
high quality of the product. Information content on
Internet can be delivered better in comparison to

television medium, reason being short time span of
television advertisements. Yoon and Kim (2001)
mentioned that Internet advertising differs from tra-
ditional advertising as it delivers unlimited informa-
tion beyond time and space and it gives unlimited
amount and sources of information. Web advertise-
ments provide information and generate awareness
without interactive involvement (Berthon et al.,
1996). On the contrary, information delivered
through SNSs advertisements is different from tra-
ditional Web advertisements because SNSs provide
a medium that is interactive in nature. A person
could scan and share information with online friends
and followers, thus making the advertisement infor-
mation viral in nature. Large media companies have
realized the potential of SNSs to reach and deepen
relationships with the ‘subscribed’ audience (Jhih-
Syuan and Pena, 2011). This specialty of SNSs
advertisement makes it the most competitive plat-
form for sharing information about products and
services. As the delivery and importance of infor-
mation for SNSs advertisements is different from
other forms of advertisements, it is important to note
its effect on advertisement value. Based on this
rationale, the hypothesis tested is:

H1: There is a significant positive impact of infor-
mation content of advertisements on the value of
advertisements displayed on social networking
websites.

2. Entertainment: An advertisement that is full of
information but nil in entertainment content is not
worthy. According to McQuail (1994) an advertise-
ment entertains when it fulfils the audience needs
for escapism, diversion, aesthetic enjoyment or
emotional release. The ability of advertising to
entertain can enhance the experience of advertising.
In addition, an advertisement could be information
for one and entertainment for other person at the
same time (Alwitt and Prabhaker, 1992). Consumers
who found advertising to be entertaining also evalu-
ate it as informative (Ducoffe, 1995). This shows
that entertainment and information are interrelated
concepts when talking about advertisements.
SNSs platform is interactive in nature and display
banner advertisements of different brands at the
same platform and same time; they have the power
to entertain the audience. Kim and Lee (2010)
noted that college students use SNSs for six
main reasons: entertainment, passing time, social
interaction, information seeking, information provi-
ding, and professional advancement. According to

Anant Saxena and Uday Khanna 19

Vision, 17, 1 (2013): 17–25

Taylor et al. (2011) SNSs advertisements provide
entertainment value to the audience. The same study
reported that entertainment exhibits almost four
times more strength of influence on favourable con-
sumers’ attitude towards advertisements than infor-
mation. With reference to the existing literature, it is
important to find the impact of entertainment on
advertisement value of SNSs advertisements. In the
same vein, the hypothesis tested is:

H2: There is a significant positive impact of enter-
tainment content of advertisements on the value of
advertisements displayed on social networking
websites.

3. Irritation: Irritation from advertisements arises
when we feel discomfort in watching advertisement
due to any reason. The reason can be personal or
social. A personal reason could be distraction while
focusing on a particular task on World Wide Web.
According to Wells et al. (1971) irritation is one
amongst six dimensions of personal reactions
towards advertising. It is the degree to which the
viewer disliked the contents that he had seen. The
words that came into the mind of the viewer at time
of getting irritated from an advertisement are
‘terrible’, ‘stupid’, ‘ridiculous’, ‘irritating’ and
‘phony’. An advertisement can be rewarding for
some viewers and yet be an irritant and unrewarding
for others (Alwitt and Prabhaker, 1992). According
to Aaker and Bruzzone (1985), increase in irritation
can lead to general reduction in the effectiveness of
advertisement. In case of Internet advertising, it also
generates considerable irritation (Schlosser et al.,
1999). As online behaviour including use of SNSs
is highly goal oriented, advertisements on SNSs
might irritate the user (Taylor et al., 2011). The lit-
erature suggested that irritation has a negative effect
on the effectiveness of advertisement irrespective of
the media. Based on this rationale the hypothesis
tested is:

H3: There is a significant negative impact of irrita-
tion content of advertisements on the value of adver-
tisements displayed on social networking websites.

A considerable amount of research on determinants of
Web advertising effectiveness and value has been done
(Berthon et al., 1996; Brown et al., 2007; Ducoffe, 1995;
Lei, 2000; Schlosser et al., 1999; Yoon and Kim, 2001);
however, these studies were more focused on traditional
websites rather than SNSs. Advertising through SNSs is
different from traditional websites due to several reasons.

First, advertisements on SNSs are different not only in form
and substance but also in delivery method. Some of the
messages are ‘pushed’ upon consumers while others rely on
consumers to ‘pull’ content; some generate revenue whereas
some are non-paid content delivered through media content
(Taylor et al., 2011). Second, SNSs have their own unique
user-to-user interface (Safko and Brake, 2009). Third, SNSs
users are increasing day by day all over the world, which
makes this medium suitable for advertising. As SNSs
advertising is different from traditional Web advertising and
a little is known about value of SNSs advertisements, this
study tries to fill this research gap by providing a model,
which tests the interrelationships between different
determinants of advertisement value.

Model Testing
The importance of advertisements displayed on SNSs is
increasing day by day. According to Stelzner (2011) 88 per cent
of the marketers have reported that their social media
advertisements have generated more exposure for their
businesses. This leads the authors to test a model for accessing
the value of advertisements displayed on SNSs by employing
structural equation modelling (SEM) approach. Use of SEM
technique gives us the opportunity to examine multiple
dependence techniques simultaneously. SEM approach is a
statistical methodology that combines the strength of factor
analysis and path analysis. According to Singh (2009) SEM is
considered as a more advanced technique than other multivariate
techniques because it can estimate a series of interrelated
dependence relationship simultaneously. According to Byrne
(1998) SEM technique is better because:

1. It accounts for measurement errors in course of
model testing.

2. It can incorporate observed (indicator) variables as
well as latent (unobserved) variables at same time
during model testing,

3. It tests a priori relationships rather than allowing the
technique or data to define the nature of relationship
between the variables.

In the present study, SEM analysis is conducted in
two major steps; first, to test the measurement model
and second, a structural model. Measurement model
provides the series of relationships that suggests how
observed variables represent latent variables (Figure 1),
tested by means of confirmatory factor analysis (CFA).
Structural model tests the conceptual representation of the
relationships between the latent variables. It tells whether
the proposed model is eligible to represent a proposed
concept and conceptual relationships between the variables
or not (Figure 2).

20 Advertising on Social Network Sites

Vision, 17, 1 (2013): 17–25

Figure 1. Measurement Model

ENTERTAINMENT

INFORMATION

IRRITATION

ADD.VALUE

ENTERTAIN 3

ENTERTAIN 2

ENTERTAIN 1

INFO 1

INFO 2

INFO 3

IRRITATION 1

IRRITATION 2

IRRITATION 3

ADDVALUE 1

ADDVALUE 2

ADDVALUE 3

0.57

0.17

0.19

0.47

0.40

0.51

0.45

0.80

0.39

0.80

0.86

0.52

0.23

0.75

0.65

0.76

0.77

0.73

Anant Saxena and Uday Khanna 21

Vision, 17, 1 (2013): 17–25

Figure 2. Structural Model

Method
Sample Design

The research focuses on social networking websites with
college students as sample respondents. The college students
were selected as sample for two basic reasons. First,
student sample is more homogeneous (less variable) in
terms of socio-economic background, demographics and
education (Peterson, 2001). Second, a number of studies
have reported that students are the main users of social
networking websites (Dwyer et al., 2007; Pempek et al.,
2009; Subrahmanyam et al., 2008). With this rationale,
present study sample includes postgraduate management
students of a reputed college based in India. 276 students
have responded to an online questionnaire mailed to 300
students. The questionnaires were mailed with Google
documents facility to form and mail online forms/
questionnaires. After removing incomplete questionnaires,
only 189 questionnaires were found to be useable for analysis
and further study. Resulting sample consists of 71 per cent
males and 29 per cent females. Subjects were asked to report
their reactions to instrument statements by considering their

perceptions of advertisements on SNSs in general, not a
single advertisement or advertisement for any particular
product. The objective of this generalization is to assess the
value of advertisement on social networking websites across
different advertisements of product and service categories.

Sample Size and SEM Analysis

Sample size is a key issue when performing SEM analysis.
According to Bentler and Bonett (1980) and Hair et al.
(2007) chi-square value is sensitive to increase in sample
size, while it lacks power to discriminate between good fit
and poor fit models with small sample size (Kenny and
McCoach, 2003). Hair et al. (2007) mentioned that 15 res-
ponses per parameter is an appropriate ratio for sample
size. Going on with this approach a sample size of 189 res-
pondents for measuring 12 parameters was appropriate.

Research Instrument

For measuring the advertisement value of advertisements
displayed on social media, a 12 item scale developed by

ADD. VALUE

ADDVALUE 3
ADDVALUE 2
ADDVALUE 1

IN1 IN2 IN3

e3 e2 e1

IRR1 IRR2 IRR3

e9 e8 e7

EN1 EN2 EN3

e6 e5 e4

INFORMATION
IRRITATION
ENTERTAINMENT

e10

e11

e13

e12

0.55 0.84 0.38

0.27

0.15

0.87 0.58

0.77 0.90 0.51

0.40

0.36
0.38

0.75
0.76

0.72

0.25

22 Advertising on Social Network Sites

Vision, 17, 1 (2013): 17–25

Ducoffe (1995) was used. The instrument was modified as
per the need of the study. A five-item Likert scale was used as
a response scale, from strongly disagrees to strongly agree.

Measurement Model
Measurement model is a specification of the measurement
theory that shows how constructs are operationalized by
sets of measured items. Confirmatory factor analysis is
used to test the reliability of a measurement model. Unlike
exploratory factor analysis, CFA allows the researcher to
tell the SEM programme which variable belongs to which
factor before the analysis (Hair et al., 2007). According to
Salisbury et al. (2001) CFA allows the researcher to specify
the actual relationship between the items and factors as
well as linkages between them.

Construct Validity

According to Hair et al. (2007) construct validity is the
extent to which a set of measured items actually represents
theoretical latent construct; those items are designed to
measure. The reliability of advertisement value scale was
examined by specifying a model in CFA using AMOS 19.
Reliability of an instrument can also be calculated by
Cronbach’s alpha, but use of SEM technique makes
such a practice unnecessary and redundant (Bagozzi
and Yi, 2012). The results (see Table 1) confirm the
overall fit of a measurement model when employed to
CFA.

According to Hair et al. (2007) one incremental fit index
(CFI), one goodness of fit index (GFI), one absolute fit
index (GFI, SRMR) and one badness of fit index (SRMR),
with chi-square statistic should be used to assess a model’s
goodness of fit. Our study results show all the different
types of indices in the acceptable range.

Convergent and Discriminant Validity

Convergent validity exists when the items that are
indicators of a specific construct converge or share a high
proportion of variance in common. In general, ‘factor
loading’ and ‘variance extracted’ measures are used to
measure convergent validity. We have used factor loading
measure in our study to measure convergent validity (Hair
et al., 2007; Salisbury et al., 2001). All the factor loadings
are statistically significant, a minimum requirement for
convergence (Hair et al., 2007). Furthermore, except items
‘Info 3’ and ‘Irritation 1’ all factor loadings are in the range
of 0.50 to 0.80, which is more than acceptable value of
0.50 (Hair et al., 2007) (see Figure 1). According to Chin
et al. (1997) discriminant validity exists if the correlation
between the constructs is not equal to 1. Following the rule,
our study shows the discriminant validity between the
constructs (see Figure 1).

Structural Model
After assessing the eligibility of scale for measuring
different variables in the study, the next step is to test the
hypothesized relationships in a structural model. Ducoffe
(1996) has proved the respective role of information,
entertainment and irritation on advertisement value for the
advertisements on the Web. In our study, we try to explore
the impact of these respective variables on advertisement
value vis-à-vis SNSs.

Performance of the Model

Hypothesized relationships are supported by the overall
model fit indices obtained. All of the fit indices are above
the recommended values. The c2/df value 2.31 met the
recommended value of less than 3 (Carmines and McIver,
1981). Hair et al. (2007) argues that chi-square value is
sensitive to sample size and number of variables; therefore,
c2/df value is not taken as a sole indicator of model fit.
Other model fit indicators taken are also within the
recommended range (see Table 2). In sum, various model
fit indices indicates that the proposed model fitted well
with the present data set.

Table 1. Model Fit Indices for Measurement Model

Statistic
Recommended

Value Obtained Value

Chi-square c2 92.616
Df 48
c2/df (Hinkin, 1995),

(Carmines and
McIver, 1981)

< 3.00 1.93

GFI (Hooper et al.,
2008), (Hair et al.,
2007)

> 0.90 0.92

AGFI (Muenjohn and
Armstrong, 2008)

> 0.80 0.88

SRMR (Hu and Bentler,
1999)

< 0.08 0.06

CFI (Watchravesringkan
et al., 2008)

> 0.80 0.92

Note: AGFI: Adjusted goodness of fit index; SRMR: Standardized root
mean square residual; CFI: Comparative fit index

Anant Saxena and Uday Khanna 23

Vision, 17, 1 (2013): 17–25

Table 2. Model Fit Indices for Structural Model

Statistic
Recommended
Value Obtained Value

Chi-square c2 115.539
Df 50
c2/df (Hinkin, 1995),

(Carmines and McIver,
1981)

< 3.00 2.31

GFI (Hooper et al., 2008),
(Hair et al., 2007)

> 0.90 0.91

AGFI (Muenjohn and
Armstrong, 2008)

> 0.80 0.86

RMSEA (MacCallum et al.,
1996)

< 0.10 0.08

CFI (Watchravesringkan
et al., 2008)

> 0.80 0.88

Note: SMSEA: Root Mean Square Error of Approximation

Estimated Standardized Path Coefficients

Figure 2 shows the standardized path coefficients of
the four constructs under investigation. All the path
coefficients were significant at the level of 0.01 with the
direction of influence as hypothesized (+ or −). Information
and entertainment were positively associated with
advertisement value whereas irritation is negatively asso-
ciated with advertisement value; thus all the hypotheses
framed are statistically supported. A significant correlation
between information and entertainment also indicates that
the consumers who find advertisement to be entertaining
are more likely to evaluate it as informative. These results
are consistent with another study (Ducoffe, 1995). Finally,
the squared multiple correlations (R2) indicates that the
present model explains 38 per cent of the variance in
advertisement value.

Discussion and Implication
The study yielded important new insights about a topic that
is important for both industry practitioners and aca-
demicians. The concept of advertisement value and factors
affecting it had been widely tested for various types
of advertisements in a number of studies but lack of work
for advertisements displayed on social networking websites
was the motivating factor to do research in the particular
domain. The study tests the model to assess advertisement
value by employing SEM approach. SEM combines the
strength of factor analysis and path analysis. It enables us
to test whether observed variables completely describes
latent variables or not. In addition, SEM is a more
successful technique than other multivariate techniques as
it can estimate a series of interrelated dependence
relationship simultaneously. It tells whether the proposed

model is eligible to represent a proposed concept and
conceptual relationships between the variables or not. The
results of CFA suggest that the observed variables are
suitable enough to represent different latent variables, that
is, information, entertainment, irritation and advertisement
value in the particular domain of social networking
advertising.

The findings of structural model analysis suggest that
the proposed model for accessing the value of
advertisements displayed on SNSs fits well. In addition,
the proposed hypotheses assessing the relationships
between the variables are statistically supported. The
findings suggest that when advertisements displayed on
SNSs provide entertainment and information content or
impressions, it increases the worth of the advertisement.
On the one hand, as has been proved true for other types of
media advertising, consumers derive utility from
advertisements that provide some useful or functional
information and increase hedonic value by entertaining
them. On the other hand, irritation decreases the net worth
of the advertisements displayed on SNSs. This suggests
that the companies using SNSs media for advertising their
products and services should reduce the contents, which
irritate the viewers’ base.

It is worth noting that ‘information’ exhibited around
1.6 times more strength of influence on advertisement
value than entertainment. This suggests that companies
should firstly focus on providing information content in
their advertisements to make their advertisements worth
for consumers. In addition, it is interesting to note that
findings of this study show a significant correlation
between information and entertainment, which indicates
that consumers who find advertisement to be entertaining
are more likely to evaluate it as informative.

Limitations
Although the study has been done taking into account the
methodological rigour, some limitations remain. First, the
sampling used is convenience sampling. Second,
exploration of other variables that affects the value of
advertisement is needed.

References
Aaker, D.A., & Bruzzone, D.E. (1985). Causes of irritation in

advertising. The Journal of Marketing, 49(2), 47–57.
Alwitt, L.F., & Prabhaker, P.R. (1992). Functional and belief

dimensions of attitudes to television advertising: Implications
for copytesting. Journal of Advertising Research, 32(5),
30–42.

Anderson, M., Brusa, J., Price, J., & Sims, J. (2011). Turning
‘Like’ to ‘Buy’ social media emerges as a commerce

24 Advertising on Social Network Sites

Vision, 17, 1 (2013): 17–25

channel (pp. 1–9). Booz & Company. Available at http://
www.booz.com/media/uploads/BaC-Turning_Like_to_Buy.
pdf

Bagozzi, R., & Yi, Y. (2012). Specification, evaluation, and
interpretation of structural equation models. Journal of the
Academy of Marketing Science, 40(1), 8–34.

Bauer, R.A., Greyser, S.A., Kanter, D.L., & Weilbacher, W.M.
(1968). Advertising in America: The consumer view. Division
of Research, Graduate School of Business Administration,
Harvard University Boston.

Bentler, P.M., & Bonett, D.G. (1980). Significance tests and
goodness of fit in the analysis of covariance structures.
Psychological Bulletin, 88(3), 588–606.

Berthon, P., Pitt, L.F., & Watson, R.T. (1996). The World Wide
Web as an advertising medium: Toward an understanding
of conversion efficiency. Journal of Advertising Research,
36(1), 43–54.

Boyd, Danah M., & Ellison, N.B. (2007). Social network sites:
Definition, history, and scholarship. Journal of Computer-
Mediated Communication, 13(1), 210–230.

Brackett, L.K., & Carr, B.N. (2001). Cyberspace advertising vs.
other media: Consumer vs. mature student attitudes. Journal
of Advertising Research, 41(5), 23–32.

Brown, J., Broderick, A.J., & Lee, N. (2007). Word of mouth
communication within online communities: Conceptualizing
the online social network. Journal of Interactive Marketing,
21(3), 2–20.

Byrne, B.M. (1998). Structural equation modeling with Lisrel,
Prelis, and Simplis: Basic concepts, applications, and pro-
gramming. New Jersey: Routledge.

Carmines, E.G., & McIver, J.P. (1981). Analyzing models with
unobserved variables: Analysis of covariance structures. In
Social measurement: Current issues (pp. 65–115). Beverly
Hills: SAGE.

Chin, W.W., Gopal, A., & Salisbury, W.D. (1997). Advancing
the theory of adaptive structuration: The development of a
scale to measure faithfulness of appropriation. Information
Systems Research, 8(4), 342–367.

Ducoffe, R.H. (1995). How consumers assess the value of adver-
tising. Journal of Current Issues & Research in Advertising,
17(1), 1–18.

———. (1996). Advertising value and advertising the Web.
Journal of Advertising Research, 36(5), 21–35.

Dwyer, C., Hiltz, S.R., & Passerini, K. (2007). Trust and
privacy concern within social networking sites: A compari-
son of Facebook and MySpace. AMCIS 2007 Proceedings
(pp. 1–12). Presented at the Thirteenth Americas Conference
on Information Systems, 9–12 August 2007, Colorado, USA.
Retrieved from http://aisel.aisnet.org/amcis2007/339

Hair, J., Black, W., Babin, B., Anderson, R., & Tatham,
R. (2007). Multivariate data analysis (6th edn). New Delhi:
Pearson Education India.

Hinkin, T.R. (1995). A review of scale development practices in
the study of organizations. Journal of Management, 21(5),
967–988.

Hooper, D., Coughlan, J., & Mullen, M. (2008). Structural
equation modelling: Guidelines for determining model fit.
Articles, 6(1), 53–60.

Hu, L., & Bentler, P.M. (1999). Cutoff criteria for fit indexes
in covariance structure analysis: Conventional criteria
versus new alternatives. Structural Equation Modeling: A
Multidisciplinary Journal, 6(1), 1–55.

Jhih-Syuan Lin, & Peña, J. (2011). Are you following me? A
content analysis of TV networks’ brand communication on
Twitter. Journal of Interactive Advertising, 12(1), 17–29.

Kenny, D.A., & McCoach, D.B. (2003). Effect of the number of
variables on measures of fit in structural equation modeling.
Structural Equation Modeling, 10(3), 333–351.

Kim, M., & Lee, M. (2010). Why do college students use Twitter?
Presented at the Association for Education in Journalism and
Mass Communication Annual Conference, 4–7 August 2007,
Denver, CO.

Lei, R.M. (2000). An assessment of the World Wide Web as an
advertising medium. Social Science Journal, 37(3), 465.

MacCallum, R.C., Browne, M.W., & Sugawara, H.M. (1996).
Power analysis and determination of sample size for covari-
ance structure modeling. Psychological Methods, 1(2), 130.

McQuail, D. (1994). Mass communication theory: An introduc-
tion. London, UK: SAGE.

Muenjohn, D.N., & Armstrong, P.A. (2008). Evaluating the
structural validity of the multifactor leadership questionnaire
(MLQ), capturing the leadership factors of transformational-
transactional leadership. Contemporary Management
Research, 4(1), 3–14.

Norris, V.P. (1984). The economic effects of advertising: A
review of the literature. Current Issues & Research in
Advertising, 7(2), 39.

Pempek, T.A., Yermolayeva, Y.A., & Calvert, S.L. (2009).
College students’ social networking experiences on
Facebook. Journal of Applied Developmental Psychology,
30(3), 227–238.

Peterson, A.R. (2001). On the use of college students in social
science research: Insights from a second-order meta-analysis.
Journal of Consumer Research, 28(3), 450–461.

Phillips, M., McFadden, D.T., & Sullins, M. (2010). How effec-
tive is social networking for direct marketers? Journal of
Food Distribution Research, 41(1), 96–100.

PricewaterhouseCoopers LLP. (2011). IAB Internet advertising
revenue report (pp. 1–23). New York: Interactive Advertising
Bureau.

PricewaterhouseCoopers Private Limited. (2011). India
entertainment and media outlook (pp. 1–141). Kolkata:
PricewaterhouseCoopers Private Limited.

Rizavi, S.S., Ali, L., & Rizavi, S.H.M. (2011). User perceived
quality of social networking websites: A study of Lahore
region. Interdisciplinary Journal of Contemporary Research
in Business, 2(12), 902–913.

Safko, L., & Brake, D.K. (2009). The social media bible: Tactics,
tools, and strategies for business success. New Jersey: John
Wiley & Sons.

Salisbury, W.D., Pearson, R.A., Pearson, A.W., & Miller, D.W.
(2001). Perceived security and World Wide Web purchase inten-
tion. Industrial Management & Data Systems, 101(3/4), 165.

Schlosser, A.E., Shavitt, S., & Kanfer, A. (1999). Survey of
Internet users’ attitudes toward Internet advertising. Journal
of interactive marketing, 13(3), 34–54.

Anant Saxena and Uday Khanna 25

Vision, 17, 1 (2013): 17–25

Singh, R. (2009). Does my structural model represent the real
phenomenon? A review of the appropriate use of structural
equation modelling (SEM) model fit indices. The Marketing
Review, 9(3), 199–212.

Social Networking Sites Account for More than 20 Percent of
All U.S. Online Display Ad Impressions, According to com-
Score Ad Metrix – comScore, Inc. (2009, 1 September).
Retrieved from http://www.comscore.com/Press_Events/
Press_Releases/2009/9/Social_Networking_Sites_Account_
for_More_than_20_Percent_of_All_U.S._Online_Display_
Ad_Impressions_According_to_comScore_Ad_Metrix
(accessed on 14 December 2012).

Stelzner, M. (n.d.). 2011 Social Media Marketing Industry Report |
Social Media Examiner. Retrieved from http://www.
socialmediaexaminer.com/social-media-marketing-industry-
report-2011/

Subrahmanyam, K., Reich, S.M., Waechter, N., & Espinoza, G.
(2008). Online and offline social networks: Use of social
networking sites by emerging adults. Journal of Applied
Developmental Psychology, 29(6), 420–433.

Taylor, D.G., Lewin, J.E., & Strutton, D. (2011). Friends, fans,
and followers: Do ads work on social networks? How gender
and age shape receptivity. Journal of Advertising Research,
51(1), 258–275.

Trusov, M., Bucklin, R.E., & Pauwels, K. (2009). Effects of
word-of-mouth versus traditional marketing: Findings from
an Internet social networking site. Journal of Marketing,
73(5), 90–102.

Watchravesringkan, K.T., Yan, R.N., & Yurchisin, J. (2008).
Cross-cultural invariance of consumers’ price perception

measures: Eastern Asian perspective. International Journal
of Retail & Distribution Management, 36(10), 759–779.

Wells, W.D., Leavitt, C., & McConville, M. (1971). A reaction
profile for TV commercials. Journal of Advertising Research,
11(6), 11–18.

Yoon Sung-Joon, & Kim Joo-Ho. (2001). Is the Internet more
effective than traditional media? Factors affecting the choice
of media. Journal of Advertising Research, 41(6), 53–60.

Anant Saxena (asaxena@imt.edu) is working as a Research
Associate at IMT Ghaziabad, UP, India. He is currently
researching the role of common service center (CSC) project in
Indian governance and also working on the impact of green
marketing on consumer purchase decision in India. He
has published research papers in national and international
journals of repute. His research interests are marketing through
social media, information technology & government policies
and e-marketing.

Uday Khanna (khannauday77@gmail.com) is an Assistant
Professor at the Faculty of Management Studies at Graphic Era
University, Dehradun, India. His areas of interest are Marketing,
Marketing Research and Sales and Distribution. He is currently
researching the quality of corporate governance of Indian
companies. He has published some good papers in national and
international journals of repute. He has rich industry experience
in FMCG companies of repute like Gillette India Ltd and
Hindustan Pencils Ltd.

www.elsevier.com/locate/intmar

Available online at www.sciencedirect.com

ScienceDirect
Journal of Interactive Marketing 28 (2014) 43–54

  • Consumer Decision-making Processes in Mobile Viral Marketing Campaigns
  • Christian Pescher & Philipp Reichhart & Martin Spann ⁎

    Institute of Electronic Commerce and Digital Markets, Ludwig-Maximilians-Universität München, Geschwister-Scholl-Platz 1, D-80539 München, Germany

    Available online 22 November 2013

    Abstract

    The high penetration of cell phones in today’s global environment offers a wide range of promising mobile marketing activities, including
    mobile viral marketing campaigns. However, the success of these campaigns, which remains unexplored, depends on the consumers’ willingness to
    actively forward the advertisements that they receive to acquaintances, e.g., to make mobile referrals. Therefore, it is important to identify and
    understand the factors that influence consumer referral behavior via mobile devices. The authors analyze a three-stage model of consumer referral
    behavior via mobile devices in a field study of a firm-created mobile viral marketing campaign. The findings suggest that consumers who plac

    e

    high importance on the purposive value and entertainment value of a message are likely to enter the interest and referral stages. Accounting for
    consumers’ egocentric social networks, we find that tie strength has a negative influence on the reading and decision to refer stages and that degree
    centrality has no influence on the decision-making process.
    © 2013 Direct Marketing Educational Foundat

    ion, In

    c. Published by Elsevier Inc. All rights reserved.

    Keywords: Mobile commerce; Referral behavior; Sociometric indicators; Mobile viral marketing

    Introduction

    The effectiveness of traditional marketing tools appears to be
    diminishing as consumers often perceive advertising to be
    irrelevant or simply overwhelming in quantity (Porter and
    Golan 2006). Therefore, viral marketing campaigns may provide
    an efficient alternative for transmitting advertising messages to
    consumers, a claim supported by the increasing number of
    successful viral marketing campaigns in recent years. One
    famous example of a viral marketing campaign is Hotmail,
    which acquired more than 12 million customers in less than
    18 months via a small message attached at the end of each
    outgoing mail from a Hotmail account informing consumers
    about the free Hotmail service (Krishnamurthy 2001). In addition
    to Hotmail, several other companies, such as the National
    Broadcasting Company (NBC) and Proctor & Gamble, have
    successfully launched viral marketing campaigns (Godes and
    Mayzlin 2009).

    In general, a viral marketing campaign is initiated by a firm that
    actively sends a stimulus to selected or unselected consumers.
    However, after this initial seeding, the viral marketing campaign

    ⁎ Corresponding author.
    E-mail addresses: pescher@bwl.lmu.de (C. Pescher),

    p.reichhart@bwl.lmu.de (P. Reichhart), spann@spann.de (M. Spann).

    1094-9968/$ -see front matter © 2013 Direct Marketing Educational Foundat
    http://dx.doi.org/10.1016/j.intmar.2013.08.001

    ion, In

    relies on peer-to-peer communications for its successful
    diffusion among potential customers. Therefore, viral market-
    ing campaigns build on the idea that consumers attribute higher
    credibility to information received from other consumers via
    referrals than to information received via traditional advertising
    (Godes and Mayzlin 2005). Thus, the success of viral marketing
    campaigns requires that consumers value the message that they
    receive and actively forward it to other consumers within their
    social networks.

    Mobile devices such as cell phones enhance consumers’
    ability to quickly, easily and electronically exchange informa-
    tion about products and to receive mobile advertisements
    immediately at any time and in any location (e.g., using mobile
    text message ads) (Drossos et al. 2007). As cell phones have the
    potential to reach most consumers due to their high penetration
    rate (cf., EITO 2010), they appear to be well suited for viral
    marketing campaigns. As a result, an increasing number of
    companies are using mobile devices for marketing activities.

    Research on mobile marketing has thus far devoted limited
    attention to viral marketing campaigns, particularly with respect to
    the decision-making process of consumer referral behavior for
    mobile viral marketing campaigns, e.g., via mobile text messages.
    Thus, the factors that influence this process remain largely
    unexplored. The literature on consumer decision-making suggests
    that consumers undergo a multi-stage process after receiving a

    c. Published by Elsevier Inc. All rights reserved.

    mailto:pescher@bwl.lmu.de

    mailto:p.reichhart@bwl.lmu.de

    mailto:spann@spann.de

    http://dx.doi.org/10.1016/j.intmar.2013.08.001

    http://dx.doi.org/10.1016/j.intmar.2013.08.001

    http://dx.doi.org/10.1016/j.intmar.2013.08.001

    http://dx.doi.org/10.1016/j.intmar.2013.08.001

    http://crossmark.crossref.org/dialog/?doi=10.1016%2Fj.intmar.2013.08.001&domain=pdf&date_stamp=2014-02-01

    44 C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    stimulus (e.g., a mobile text message) and before taking action
    (e.g., forwarding the text message to friends) (Bettman 1979; De
    Bruyn and Lilien 2008). At different stages of the process, various
    factors that influence consumer decision-making can be measured
    using psychographic, sociometric, and demographic variables as
    well as by consumer usage characteristics. Whereas previous
    studies have mainly focused on selected dimensions, our study
    considers variables from all categories.

    De Bruyn and Lilien (2008) analyzed viral marketing in an
    online environment and discussed relational indicators of
    business students who had received unsolicited e-mails from
    friends. This study provided an important contribution and
    amplified our understanding about how viral campaigns work.
    The present paper differs from the work of De Bruyn and Lilien
    (2008) and goes beyond their findings in four important ways:
    actor, medium, setting, and consumer characteristics. The first
    difference is the actor involved. In viral campaigns, the
    initiator, usually a company, sends the message to the seeding
    points (first level). Next, the seeding points forward the
    message to their contacts (second level), and so on. Whereas
    De Bruyn and Lilien (2008) focused on the second-level actors,
    the present study focuses on the first-level actors, e.g., the direct
    contacts of the company. We believe that for the success of a
    campaign, additional insights into the behavior of first-level
    actors are very important because if they do not forward the
    message, it will never reach the second-level actors. The second
    difference is the medium used in the campaign. Although we
    cannot explicitly rule out that participants of De Bruyn and
    Lilien’s (2008) campaign used mobile devices, they conducted
    their campaign at a time when the use of the Internet via mobile
    devices was still very uncommon. Therefore, it is reasonable to
    assume that at least the majority of their participants used a
    desktop or a laptop computer when they participated in De
    Bruyn and Lilien’s (2008) campaign. In contrast, the present
    study explicitly uses only text messages to mobile devices. In
    addition, mobile phones are a very personal media which is
    used in a more active way compared to desktop or laptop
    computers (Bacile, Ye, and Swilley 2014). The third difference is
    the setting in which the viral campaign takes place. Whereas the
    participants in the study by De Bruyn and Lilien (2008) were
    business students from a northeastern US university, we conduct
    a mobile marketing campaign in a field setting using randomly
    selected customers. The fourth and most important difference is
    that De Bruyn and Lilien (2008) focused exclusively on relational
    characteristics. In addition to relational characteristics, this
    paper also considers variables that describe demographic factors,
    psychographic factors, and usage characteristics. As these
    variables yield significant results, the study and its findings go
    beyond the findings of De Bruyn and Lilien (2008).

    The main goal and contribution of this work is, first, to
    analyze consumers’ decision-making processes regarding their
    forwarding behavior in response to mobile advertising via their
    cell phone (i.e., text messages) in a mobile environment using a
    real-world field study. To analyze consumers’ decision-making
    processes, we use a three-stage sequential response model of
    the consumer decision-making process. Additionally, we inte-
    grate consumers’ egocentric social networks into a theoretical

    framework to consider social relationships (e.g., tie strength,
    degree centrality) when analyzing mobile viral marketing
    campaigns. Thus, to understand referral behavior, we integrate
    psychographic (e.g., usage intensity) and sociometric (e.g., tie
    strength) indicators of consumer characteristics. We are then able
    to determine the factors that influence a consumer’s decision to
    refer a mobile stimulus and are able to identify the factors that
    lead to reading the advertising message and to the decision to
    learn more about the product.

    Related Literature

    Viral Marketing and Factors that Influence Consumer Referral
    Behavior

    Viral marketing campaigns focus on the information spread of
    customers, that is, their referral behavior regarding information or
    an advertisement. Companies are interested in cost-effective
    marketing campaigns that perform well. Viral marketing cam-
    paigns aim to meet these two goals and can, accordingly, have a
    positive influence on company performance (Godes and Mayzlin
    2009). Companies can spread a marketing message with the
    objective of encouraging customers to forward the message to their
    contacts (e.g., friends or acquaintances) (Van der Lans et al. 2010).
    In this way, the company then benefits from referrals among
    consumers (Porter and Golan 2006). Referrals that result from a
    viral marketing campaign attract new customers who are likely to
    be more loyal and, therefore, more profitable than customers
    acquired through regular marketing investments (Trusov, Bucklin,
    and Pauwels 2009).

    Two streams of research can be identified. The first is the
    influence of viral marketing on consumers, and the second is
    research that has analyzed the factors that lead to participating
    in viral marketing campaigns. First, previous research identified
    that viral marketing influences consumer preferences and pur-
    chase decisions (East, Hammond, and Lomax 2008). Further, an
    influence on the pre-purchase attitudes was identified by Herr,
    Kardes, and Kim (1991). In addition, viral marketing also
    influences the post-usage perceptions of products (Bone 1995).

    Second, previous research has identified satisfaction,
    customer commitment and product-related aspects as the most
    important reasons for participating in viral marketing campaigns
    (cf., Bowman and Narayandas 2001; De Matos and Rossi 2008;
    Maxham and Netemeyer 2002; Moldovan, Goldenberg, and
    Chattopadhyay 2011). With respect to psychological motives,
    self-enhancement was identified as a motive for consumers to
    generate referrals (De Angelis et al. 2012; Wojnicki and Godes
    2008). The importance of self-enhancement in addition to social
    benefits, economic incentives and concern for others was identified
    as a motive behind making online referrals (Hennig-Thurau et al.
    2004). Referrals can be differentiated into positive and negative
    referrals. Anxiety reduction, advice seeking and vengeance are
    factors that contribute to negative referrals (Sundaram, Mitra, and
    Webster 1998).

    Within the referral process, the relationships and social
    network position of the consumer are also influential. For
    example, Bampo et al. (2008) found that network structure is

    45C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    important in viral marketing campaigns. Furthermore, it has
    been determined that consumers are more likely to activate
    strong ties than weak ties when actively searching for
    information (Brown and Reingen 1987) because strong ties
    tend to be high-quality relationships (Bian 1997; Portes 1998).
    In addition, targeting consumers who have a high degree
    centrality (e.g., quantity of relationships) leads to a higher
    number of visible actions, such as page visits, than do random
    seeding strategies (Hinz et al. 2011). Kleijnen et al. (2009)
    analyzed the intention to use mobile services using sociometric
    variables and evaluated how consumers’ network positions
    influence their intentions to use mobile services. However, the
    previous study contributes to the literature by analyzing a different
    research question than is examined in our paper. Specifically,
    Kleijnen et al. (2009) focused on the intention to use services,
    while our study focuses on consumers’ decision-making processes
    until they make a referral. In summary, previous research focused
    on the consumers’ psychographic constructs or relationships and
    social networks to explore why consumers participate in viral
    marketing campaigns and why they make referrals, two constructs
    that are rarely analyzed together. Iyengar, Van den Bulte, and
    Valente (2011) used both constructs jointly and found that
    correlations between the two are low. However, this study did
    not take place in an online or mobile context but rather in the
    context of referrals for new prescription drugs between specialists.
    In contrast, our study analyzes both aspects together within a
    mobile viral marketing campaign.

    In addition to offline- or online-based viral marketing activities,
    an increasing number of companies are conducting marketing
    campaigns using mobile phones, and promising approaches
    include mobile viral marketing campaigns. Research on mobile
    viral marketing is relatively unexplored because most research in
    the field of mobile marketing analyzes marketing activities such as
    mobile couponing (Dickinger and Kleijnen 2008; Reichhart,
    Pescher, and Spann 2013), the acceptance of advertising text
    messages (Tsang, Ho, and Liang 2004) or the attitudes toward
    (Tsang, Ho, and Liang 2004) and the acceptance of mobile
    marketing (Sultan, Rohm, and Gao 2009). In the context of mobile
    viral marketing research, Hinz et al. (2011) studied mobile viral
    marketing for a mobile phone service provider and determined that
    the most effective seeding strategy for customer acquisition is to
    focus on well-connected individuals. In contrast to our study, their
    referrals were conducted via the Internet (i.e., the companies’
    online referral system) rather than via a mobile device (i.e.,
    forwarding the text message immediately). Nevertheless, generat-
    ing referrals using a mobile device can affect referral behavior.
    Palka, Pousttchi, and Wiedemann (2009) postulated a grounded
    theory of mobile viral marketing campaigns and found that trust
    and perceived risk are important factors in the viral marketing
    process. In comparison to our study, they used qualitative methods
    and did not conduct a real-world field study. Okazaki (2008)
    identified, for Japanese adolescents, consumer characteristics such
    as purposive value and entertainment value are the main factors
    in mobile viral marketing campaigns and that these factors
    significantly influence the adolescents’ attitudes toward viral
    marketing campaigns. Furthermore, both purposive value
    and entertainment value are influenced by the antecedents’

    group-person connectivity, commitment to the brand, and
    relationship with the mobile device. In contrast to our study,
    Okazaki (2008) did not analyze whether referrals were made,
    nor did he analyze the referrals that were directly made via a
    mobile device by forwarding the mobile text message. Instead, he
    analyzed the general viral effect in the form of telling or
    recommending the mobile advertising campaign. Further, our
    field study analyzes the entire consumer decision-making process
    for a mobile viral marketing campaign via text messages across
    the three stages: from stage one, reading, to stage two, interest, to
    stage three, decision to refer.

    To summarize, in contrast to the existing studies in the field
    of mobile viral marketing, we analyze consumers’ egocentric
    networks via measures such as tie strength and degree
    centrality. These sociometric factors are analyzed jointly
    with psychographic constructs across the three stages in the
    decision-making process. Thus, our study uses a real-world
    mobile viral marketing campaign and enables us to test the
    relative importance of social embeddedness and consumer
    characteristics with respect to consumers’ decision to forward
    mobile messages.

    Decision-making Process and Specifics of the Mobile Environment

    Consumer decision-making is a multiple-stage process
    (Bettman 1979; De Bruyn and Lilien 2008; Lavidge and
    Steiner 1961). In a viral marketing campaign, the final goal is to
    generate a high number of referrals. Therefore, our model of
    consumer forwarding behavior is designed for the specific
    situation of mobile viral marketing campaigns.

    The process and first stage begin with the consumer reading
    a mobile advertising text message on his or her mobile phone.
    If this text message sparks the consumer’s interest and the
    consumer wants to learn more about the offered product, he/she
    enters the interest stage, which is the second stage of the model.
    If the consumer finds the product interesting after learning
    about it, he or she makes a referral, which is the third stage of
    our model (decision to refer).

    In this study, we analyze the stages of the consumer
    decision-making processes within a mobile environment, i.e.,
    within a mobile viral marketing campaign. There are several
    differences between mobile viral marketing and online or
    offline viral marketing. A mobile text message is more
    intrusive than an e-mail because it appears immediately on
    the full screen. Consumers usually carry their mobile phone
    with them and a mobile message may also reach them in a
    private moment. Contrary, consumers may need to purposely
    look into their e-mail accounts to receive e-mails. Therefore a
    mobile message can be more personal compared to an e-mail.
    In comparison to offline face-to-face referrals, mobile referrals
    do not possess this personal aspect and can be transmitted
    digitally within a few minutes to several friends in different
    places simultaneously. This is not possible in the offline world.
    Additionally, a mobile referral can reach the recipient faster
    than an e-mail or an offline referral. Thus, the mobile device
    may influence the referral behavior due to its faster digital
    transmission of information.

    46 C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    Development of Hypotheses

    While the factors that influence the stages of the decision-
    making process can be divided into two groups, we analyze
    them jointly in this study. The first group consists of the
    psychographic indicators of consumer characteristics, thus
    focusing on each consumer’s motivation to participate in the
    campaign and his or her usage behavior. The second group of
    factors includes sociometric indicators of consumer character-
    istics, thus providing information about the type of relationship
    that the consumer has with his or her contacts and his or her
    resulting social network.

    Psychographic Indicators of Consumer Characteristics

    As mentioned in the related literature section, according to
    Okazaki (2008), in viral marketing campaigns, purposive value
    and entertainment value are the primary value dimensions for
    consumers. This insight is based on the finding that consumers
    gain two types of benefits from participating in sales promotions:
    hedonic and utilitarian benefits (Chandon, Wansink, and Laurent
    2000). Hedonic benefits are primarily intrinsic and can be
    associated with entertainment value. Consumers participate
    voluntarily and derive value from the fun of interacting with
    peers by forwarding a referral (e.g., an ad might be of interest to
    peer recipients) (Dholakia, Bagozzi, and Pearo 2004). A previous
    study found that the entertainment factor influences intended use
    in mobile campaigns (Palka, Pousttchi, and Wiedemann 2009).
    Okazaki (2008) found that in a mobile viral marketing campaign,
    the entertainment value directly influences the recipient’s attitude
    toward the campaign, which, in turn, influences the recipient’s
    intention to participate in a mobile viral campaign. Phelps et al.
    (2004) showed that the entertainment value is a factor that
    increases consumers’ forwarding behavior in viral marketing
    campaigns conducted via e-mail. Thus, we may presume that
    consumers who place high importance on the entertainment value
    of exchanging messages are more likely to enter the reading and
    interest stages than consumers who do not value entertainment to
    the same degree. Additionally, the entertainment value can
    also influence the decision to refer (i.e., forwarding) behavior
    because a text message that addresses consumers who place
    high importance on entertainment value causes the recipient to
    think about forwarding the text message and motivates them
    to forward the mobile advertisement to friends (i.e., decision
    to refer stage).

    H1. Consumers who place high importance on the entertainment
    value of a message are more likely to a) enter the reading stage,
    b) enter the interest stage and c) enter the decision to refer stage.

    As utilitarian benefits are instrumental and functional, they
    can be associated with purposive value (Okazaki 2008).
    Dholakia, Bagozzi, and Pearo (2004) analyzed the influence
    of purposive value in network-based virtual communities and
    found that purposive value is a predictor of social identity and
    a key motive for an individual to participate in virtual
    communities. With respect to the mobile context, previous
    research found that purposive value has a direct, significant

    influence on a consumer’s attitude toward a mobile viral marketing
    campaign and that this attitude significantly influences the
    intention to participate in mobile marketing campaigns (Okazaki
    2008). For some consumers, forwarding a (mobile) advertisement
    in a viral marketing campaign can have a personal and a social
    meaning (e.g., doing something good for friends by forwarding the
    ad). Thus, we hypothesize that consumers who place high
    importance on the purposive value of exchanging messages will
    display a greater likelihood to enter the reading and interest stages.
    We also hypothesize that consumers who place high importance on
    the purposive value of a message are more likely to make the
    decision to forward the message.

    H2. Consumers who place high importance on the purposive
    value of a message are more likely to a) enter the reading stage,
    b) enter the interest stage and c) enter the decision to refer stage.

    The intensity of usage (e.g., a high quantity of written text
    messages) positively influences the probability of trial and
    adoption (Steenkamp and Gielens 2003). Thus, consumers with
    high usage intensities are more likely to actively participate in a
    mobile viral marketing campaign. As mobile viral marketing
    campaigns are a fairly new form of advertising, consumers with
    high usage intensities are more likely to participate in mobile
    viral marketing campaigns and are more likely to forward
    messages than consumers with low usage intensities. Therefore,
    we propose that usage intensity has an effect on the decision to
    forward a mobile advertising text message. The likelihood of
    deciding to forward the mobile advertisement increases with
    the usage intensity of mobile text messages. This proposition is
    consistent with Neslin, Henderson, and Quelch (1985), who
    found that the promotional acceleration effect is stronger for
    heavy users than it is for other consumers. Godes and Mayzlin
    (2009) analyzed the effectiveness of referral activities and
    argued that the sales impact from less loyal customers is
    greater, but they also highlighted that this greater sales impact
    does not mean that the overall referrals by less loyal customers
    have a greater impact than those by highly loyal customers.
    They concluded that companies who want to implement an
    exogenous referral program to drive sales should focus on both
    less loyal and highly loyal customers because focusing only on
    highly loyal or less loyal customers is not necessarily the
    cornerstone of a successful viral marketing campaign. In the
    online context, a previous study found that experience with the
    Internet influences channel usage behavior (Frambach, Roest,
    and Krishnan 2007). Thus, as consumers with high usage
    intensity are used to communicating with mobile phones, they
    know how to write, read and forward mobile text messages.
    Accordingly, it is likely that the threshold to forward a text
    message is lower for consumers with high usage intensity than
    it is for other consumers and that such consumers are thus more
    inclined to refer. Further, the minimal effort required to directly
    forward a mobile text message via a cell phone increases the
    decision to refer. Thus, we hypothesize that heavy mobile users
    will be more likely to refer than will light users.

    H3. The usage intensity of the referral medium has a positive
    influence on the likelihood of making the decision to refer.

    47C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    Sociometric Indicators of Consumer Characteristics

    Sociometric indicators describe the interaction structure of
    an individual consumer with his or her surroundings. When
    consumers receive an interesting mobile advertising message, it
    is likely that they want to find out more about it. Once the
    consumer has visited the product homepage, he or she then
    considers not only whether the message is worth forwarding but
    also to whom it should be forwarded.

    Sociometric indicators provide information about the social
    network of each individual consumer. This individual network
    influences the likelihood of knowing someone who may be
    interested in the offered product. Thus, social networks have a
    significant impact on the decision-making process in a viral
    marketing campaign. The decision to forward the mobile
    advertising message depends on two factors: the quality and the
    quantity of relations, i.e., the tie strength and the degree centrality.

    Tie strength is an important factor in viral marketing and
    increases with the amount of time spent with the potential
    recipient and with the degree of emotional intensity between
    the sender and the potential recipient (Marsden and Campbell
    1984). Consumers perceive strong ties to be more influential
    than weak ties (Brown and Reingen 1987) because the strong
    ties seem more trustworthy (Rogers 1995). Therefore, because
    consumers are more motivated to provide high-value informa-
    tion to strong ties (Frenzen and Nakamoto 1993), tie strength is
    an indicator of the quality of the relationship.

    Reagans and McEvily (2003) studied how social network
    factors influence knowledge transfer at an R&D firm. To
    measure the tie strength, they used two items that are analogous
    to those that we used (Burt 1984). Their results indicated that
    tie strength positively influences the ease of knowledge
    transfer. Thus, network ties increase a person’s capability to
    send complex ideas to heterogeneous persons. Overall, they
    highlighted the importance of tie strength with respect to the
    knowledge transfer process, and they postulate that tie strength
    holds a privileged position. Other studies found that weak ties
    make non-redundant information available (Levin and Cross
    2004). In an online setting, participants were more likely to
    share information with strong ties than with weak ties (Norman
    and Russell 2006). With respect to viral marketing conducted
    via e-mail, previous research has found that tie strength has a
    significant influence on whether the recipient examines an
    e-mail message sent from a friend (i.e., opens and reads the
    message) (De Bruyn and Lilien 2008). Tie strength was also
    determined to be less relevant in an online setting compared to an
    offline setting (Brown, Broderick, and Lee 2007). In a non-mobile
    or non-online context, stronger ties are more likely to activate the
    referral flow (Reingen and Kernan 1986). Furthermore, tie
    strength is positively related to the amount of time spent receiving
    positive referrals (van Hoye and Lievens 1994).

    As previously mentioned, research on word-of-mouth behav-
    ior has shown that people engage in word-of-mouth for reasons
    such as altruism (Sundaram, Mitra, and Webster 1998). However,
    Sundaram, Mitra, and Webster (1998) did not control for the
    quality of a relationship between sender and recipient. Research
    concerning referral reward programs has identified that offering a

    reward increases the referral intensity and has a particular impact
    on weak ties (Ryu and Feick 2007). Brown and Reingen 1987
    found that while strongly tied individuals exchange more
    information and communicate more frequently, weak ties play
    an important bridging role. Additionally, Granovetter (1973)
    stated that one is significantly more likely to be a bridge in the
    case of weak ties than in strong ties. In job search, when using
    personal networks, it was found that weak ties have a higher rate
    of effectiveness when addressing specialists for jobs compared to
    strong ties (Bian 1997) and that the income of people using weak
    ties was greater than those who used strong ties (Lin, Ensel, and
    Vaughn 1981). At the information level, consumers who are
    connected via strong ties tend to share the same information
    that is rarely new to them, while consumers obtain important
    information from weak ties who tend to possess information that
    is “new” to them (Granovetter 1973). Consistent with this
    finding, Levin and Cross (2004) found that novel insights and
    new information are more likely to pass along weak ties than
    between strong ties. As in our study, viral marketing information
    can be perceived as a novel insight or new information. Given
    that consumers are more likely to send a message to someone if
    the content is new to the receiver, it is more likely that consumers
    will forward the text message to a weak tie than to a strong tie.
    Thus, we presume that consumers prefer to forward mobile
    advertising text messages, such as the one used in our study (for a
    new music CD), to other customers with whom they are connected
    through weak ties.

    Similarly, Frenzen and Nakamoto (1993) postulate that the
    motivation to share information or refer a product is driven by the
    value of the information and the cost of sharing. They identified
    (though only for weak ties) an influence of word-of-mouth that is
    spread by value and opportunity costs. In our case, when customers
    forward a mobile advertising message, the opportunity cost is low
    because forwarding can be done easily and without any effort (e.g.,
    compared to meeting the friend personally in the city). In the case
    of strong ties, the preferences of the recipient (e.g., for products) are
    well known to the sender, whereas these preferences are unclear for
    weak ties. Thus, people who want to do something beneficial for
    their contacts know the likelihood that it will benefit the recipient in
    the case of strong ties, but they do not know the benefit it may bring
    to weak ties. In our study, this benefit involved sharing information
    to acquire a free new music CD. Because the costs of sharing are
    low using cell phones, people are more inclined to forward such
    information. With respect to strong ties, people know whether the
    information is relevant. Furthermore, relationships to strong ties are
    more important than relationships to weak ties. Importantly,
    people do not want to displease strong ties by sending irrelevant
    information or cause information overload with unsuitable
    information. In the case of receiving annoying information, the
    recipient could ask the sender not to forward text messages
    anymore. This sanction is more painful when received from strong
    ties (e.g., good friends) than from weak ties (e.g., acquaintances)
    because the weak ties are less important to the sender. This is
    similar to the finding that people who are dissatisfied (e.g., with a
    product or service) are more likely to advise against the purchasing
    of the product to strong ties rather than to weak ties (Wirtz and
    Chew 2002), which may also be due to the sanction issue. In

    48 C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    mobile viral marketing campaigns, because the sharing of
    information is easy and not costly, factors such as knowledge
    about the preferences of the recipient or the fear of annoying
    strong ties become more important when deciding whether and to
    whom to refer the message.

    Thus, we hypothesize the following:

    H4. Tie strength has a negative influence on the likelihood of
    making the decision to refer.

    Diffusion occurs via replication or transfer, e.g., of used goods
    (Borgatti 2005). Within the group of replication processes,
    replications can occur one at a time (serial duplication),
    e.g., gossip or viral infections, or simultaneously (parallel
    duplication), e.g., e-mail broadcasts or text messages on mobile
    phones. Degree centrality is a measure that is suitable for
    analyzing processes in which a message is duplicated simulta-
    neously because it can be interpreted as a measure of immediate
    influence — the ability to “infect” others directly (Borgatti 2005,
    p 62). Hubs are identified using degree centrality because they are
    actors who possess a high number of direct contacts (Goldenberg
    et al. 2009) and because they know a high number of people to
    whom they can forward a message and can thus influence more
    people (Hinz et al. 2011). Hubs also adopt earlier in the diffusion
    process. In detail, innovative hubs increase the speed of the
    adoption process, while follower hubs influence the size of the
    total market (Goldenberg et al. 2009). Further, hubs tend to be
    opinion leaders (Kratzer and Lettl 2009; Rogers and Cartano
    1962) because they have a high status and serve as reference
    points in the information diffusion process. Small groups of
    opinion leaders often initiate the diffusion process of innovations
    (Van den Bulte and Joshi 2007). Czepiel (1974) analyzed
    whether centrality in opinion networks influenced the adoption
    and found no significance for this, a finding that is contrary to
    other literature in the field (e.g., Goldenberg et al. 2009).
    Furthermore, targeting central customers leads to a significant
    increase in the spread of marketing messages (Kiss and Bichler
    2008). In a viral marketing campaign for a mobile service where
    referrals are conducted via the Internet (i.e., online referral
    system) and not via forwarding a mobile text message, the results
    showed that high centrality increases the likelihood of participa-
    tion (Hinz et al. 2011). Therefore, we hypothesize that degree
    centrality has a positive influence on the decision to refer.

    H5. Degree centrality has a positive influence on the likelihood
    of making the decision to refer.

    Empirical Study

    Goal and Research Design

    The goal of this empirical study is to test the hypotheses
    derived above using a three-stage model that represents the
    stages of a consumer’s decision-making process in a mobile
    referral context.

    In our field study, we conducted a mobile marketing
    campaign. The randomly chosen participants had previously
    agreed to receive mobile advertising text messages on their cell

    phones (opt-in program). We sent a text message to 26,137
    randomly chosen customers that included a link to a website
    and the notice that they could download a recently released
    music CD for free. The only purpose of this website was to give
    the campaign’s participants the option to download the music
    CD for free. In the text message, they were also asked to
    forward the message to their contacts. The exact text of the
    message stated, “Amazing! You & your friends will receive a
    new CD as an MP3 for free! No subscription! Available online:
    URL.com -N Forward this text message to your friends now!”

    One week later, we sent another text message to all of the
    participants who received the initial mobile advertising text
    message with a link to an online survey. This second text
    message contained the request to participate in an online
    survey. We provided one 100 Euro and two 50 Euro prizes as
    incentives to participate in the survey. The winners were drawn in a
    lottery. In the questionnaire, the participants provided information
    about their behavior during different stages of the referral process
    and about their psychological constructs and egocentric networks
    (Burt 1984). Egocentric networks are networks that analyze the
    focal actor and the actor’s direct friends as well as the relations that
    exist between them (Burt 1984).

    Measures

    The psychographic constructs “purposive value” and “enter-
    tainment value” were adapted from Dholakia, Bagozzi, and Pearo
    (2004) and Okazaki (2008). Concerning the operationalization of
    both psychographic constructs, i.e., purposive value and entertain-
    ment value, we addressed the consumers’ characteristics to identify
    the consumers who place high importance on the purposive value
    of messages in general. We analyzed the consumer’s characteristics
    concerning both constructs, i.e., the importance of the purposive
    value and the entertainment value for respondents. Items were
    measured on a seven-point Likert scale, using scale points from
    “do not agree at all” (1) to “totally agree” (7). We operationalized
    the “usage intensity” by surveying the number of text messages
    each participant wrote per day (see Appendix A for details).

    To measure consumers’ social networks, we surveyed their
    egocentric networks (Burt 1984; Fischer 1982; McCallister and
    Fischer 1978; Straits 2000). Egocentric networks are defined as
    the direct relationships between an individual consumer (or
    ego) and other consumers (or alters) and the relationships that
    exist between the alters. These are small networks of one focal
    actor called the “ego”, the participant in the survey, and his or
    her contacts, called “alters”. The difference between a regular
    network and an egocentric network is that in the latter, all of the
    necessary information is obtained from one actor, which makes
    it a feasible method for obtaining samples that are representa-
    tive of a large-scale population. To access the respondents’ core
    networks, we used the term “generator,” which was taken from
    Burt (1984), and adapted it to the specific characteristics of this
    study (see Appendix A for details). The participants first generated
    their list of alters by identifying their most frequent contacts and
    were then asked a series of questions, which helped us to gain
    additional insights in their social network, including the strength
    of the relationship with each contact. Because each egocentric

    49C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    network is calculated based on information from a single
    respondent, such networks are usually treated as undirected.
    Based on this information, we calculated the degree centrality,
    which is the number of ties for a node, and average tie strength
    for each network. Marsden (2002) showed that the egocentric
    centrality measures are generally good proxies for sociometric
    centrality measures.

    Model

    The model consists of a funnel of three successive decisions:
    (i) reading the message, (ii) visiting the homepage (interest) and
    (iii) forwarding the message (decision to refer). In each stage,
    the number of observations diminishes because only consumers
    who took action in the last stage can take another action in the
    next stage, i.e., only consumers who read the message can access
    the homepage. Fig. 1 shows that the model is hierarchical, nested,
    and sequential, which leads to desirable statistical properties.
    Therefore, we use Maddala’s (1983, p 49) sequential response
    model, which is also known as a model for nested dichotomies
    (Fox 1997). We follow the argumentation of De Bruyn and Lilien
    (2008), who adapted a model of Maddala (1983, pp 49) to the
    context of consumer decision-making (see Appendix B for our
    model). We fit the model by simultaneously maximizing the
    likelihood functions of the three dichotomous models in Stata 12.
    Each likelihood function incorporates the estimated probabilities
    of the preceding stages.

    De Bruyn and Lilien (2008) argued that consumers do not
    drop out at random in this process because it is a process of
    self-selection, which may raise statistical concerns. However,
    the parameter estimates for the structure of the model used in
    this paper have been shown to be unaffected by changes in the
    marginal distributions of the variables (Bishop, Fienberg, and
    Holland 1975; Mare 1980).

    Consumer

    does not read

    message
    n=309

    Consumer
    does not visit

    homepage
    n=194

    Consumer
    does not for-

    ward messag
    n=296

    Consumer
    receives
    message

    n=943

    Consumer
    reads

    message
    n=634

    Fig. 1. Consumers’ decision-making

    Results

    Descriptive Statistics and Bias Tests

    In all, 943 subjects responded to the survey. Of these, 634 read
    the initial message (reading), 440 visited the homepage (interest)
    and 144 consumers forwarded the message (decision to refer).
    Table 1 shows the correlations and descriptive statistics among
    the variables in this study.

    First, we compare the demographic characteristics of the
    survey respondents with the demographic characteristics of the
    entire customer sample. Of the 943 survey respondents, 28%
    are female, which is in line with the entire sample. In addition
    we observed the age distribution of the survey respondents as
    well as the entire customer sample and found that the groups
    are essentially consistent (see Table 2).

    Second, we compared consumers who read the text message
    (Nread = 634) with those who did not read the initial text message
    (Nnoread = 309) with respect to their surveyed demographics and
    cell phone usage behavior. We found no significant difference
    between the groups for demographics (female: Mread = 27.0%,
    Mnonread = 30.1%, p N .31; age: Mread = 29.2 yrs, Mnonread =
    30.6 yrs, p N .06), monthly cell phone usage (Mread = 29.28 €,
    Mnonread = 29.62 €, p N .95) or age and gender.

    Three-stage Decision-making Model

    We include all explanatory variables in the estimation of
    every stage to avoid an omitted variable bias. Table 3 shows the
    results of our sample selection model.

    Entertainment Value and Purposive Value (H1 and H2)
    We find significant influence concerning consumers who place

    high importance on the entertainment value of exchanging mobile

    e

    Consumer
    forwards
    message

    n=144

    U
    N

    A
    W

    A

    R

    E
    R

    E
    A

    D
    IN

    G

    S
    TA

    G
    E

    IN

    T

    E
    R

    E
    S

    T
    S
    TA
    G
    E

    D
    E

    C
    IS

    IO
    N

    T
    O

    R
    E

    F
    E

    R
    S
    TA
    G
    E

    Consumer
    visits

    homepage
    n=440

    process in the viral campaign.

    Table 1
    Descriptive statistics.

    Mean StD 1 2 3 4 5

    1. Entertainment value 4.19 1.53
    2. Purposive value 3.81 2.01 .46⁎⁎

    3. Usage intensity 7.53 19.73 .14⁎⁎ .08 ⁎⁎

    4. Tie strength 3.10 .80 .11⁎⁎ .05 .01
    5. Degree centrality 3.04 1.46 .08⁎⁎ .03 .05 .02
    6. Age 29.69 11.08 −.10⁎⁎ .05 −.14⁎⁎ .02 −.17⁎⁎

    Notes: means, standard deviations and correlations, N = 943.
    ⁎⁎ p b .05.

    Table 3
    Results of the three-stage model.

    Stage: Reading Stage: Interest Stage: Decision
    to refer

    Coefficient SE Coefficient SE Coefficient SE

    Entertainment value .116 ⁎⁎ .054 .181 ⁎⁎ .070 .204 ⁎⁎ .101
    Purposive value .062 .045 .167 ⁎⁎ .063 .600 ⁎⁎ .095
    Usage Intensity −.003 .003 .008 .008 .010 ⁎ .006
    Tie strength −.219 ⁎⁎ .094 −.156 .114 −.461 ⁎⁎ .153
    Degree centrality −.021 .050 −.010 .064 .114 .085
    Age −.012 ⁎ .006 −.014 .009 .036 ⁎⁎ .012
    Gender a .098 .160 .580 ⁎⁎ .200 −.229 .283
    Intercept 1.069 ⁎⁎ .461 −.100 .570 −4.264 ⁎⁎ .814
    n 943
    Log likelihood −1174.81
    Wald chi2 180.58
    Prob N chi2 b.01

    a Dummy coding (0 = female, 1 = male).
    ⁎ p b .10.
    ⁎⁎ p b .05.

    50 C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    text messages with regard to the reading stage (coefficient:
    .116/H1a), the interest stage (coefficient: .181/H1b) and the
    decision to refer stage (coefficient: .204/H1c). Furthermore,
    we find a significant increase in the likelihood of entering the
    interest stage (coefficient: .167/H2b) as well as the decision to
    refer stage (coefficient: .600/H2c) for consumers who place
    high importance on purposive value. However, no support can
    be found for H2a.

    Overall, consumers who place higher importance on the
    entertainment value of exchanging text messages and who
    place higher importance on the purposive value demonstrate an
    increased likelihood of entering the interest and decision to
    refer stages.

    Usage Intensity (H3)
    Our results show that the influence of usage intensity on the

    decision to refer a mobile text message is only significant at the
    10% level (coefficient .010/H3). Thus, consumers who are used
    to writing mobile text messages are more likely to forward
    mobile text messages as well as the advertising text message.
    This result is consistent with previous findings that usage
    intensity is positively related to user behavior (Gatignon and
    Robertson 1991).

    Tie Strength (H4)
    Our results support H4: Tie strength significantly decreases

    the likelihood that consumers decide to send and forward a
    mobile text message (coefficient: −.461/H4). Thus, lower levels
    of tie strength increase the likelihood of the decision to send
    advertising text messages. A previous study found that the

    Table 2
    Demographics of survey respondents and the entire customer sample.

    Percentage

    Survey respondents Entire customer sample

    Age b20 20% 11%
    20–29 37% 36%
    30–39 22% 28%
    40–49 15% 17%
    50–59 4% 6%
    ≥60 1% 2%

    receivers of unsolicited e-mails tend to pay more attention to
    messages from close contacts (i.e., high-quality contacts) (De
    Bruyn and Lilien 2008). However, their study focused on
    consumers who are actively searching for relevant information
    and are thus receivers of information. In contrast, the present
    study addresses mobile advertising text messages that are sent
    from a consumer to the consumer’s contacts without being
    solicited. In other words, we focus on the sender of the message.
    The difference between the sender and the receiver of a message
    provides a solid explanation for the differences in the results
    between the two studies. Further, we find a negative influence of
    tie strength on the likelihood to read the message, which may be
    explained by the low tendency of consumers with strong tie
    relationships to read firm-initiated text messages.

    To gain deeper insight into the negative impact of tie
    strength on the decision to forward a message, we conduct an
    additional analysis and find that the average tie strength
    between senders and receivers of forwarded messages is 2.99.
    This tie strength is significantly less than the average tie
    strength of 3.09 for connections where no text messages were
    forwarded (p b .05).

    Degree Centrality (H5)
    In testing H5, we focus on the influence of degree centrality

    on the decision to refer and find that the number of contacts
    (i.e., degree centrality) has no influence on the decision to refer.
    Thus, H5 is not supported.

    In addition to testing the hypotheses, we examine the
    influence of gender on each stage of the decision-making
    process. The results show that gender has a significant influence
    only on the interest stage (coefficient: .580). No significant
    influence of gender is identified for the reading or decision to
    refer stages. Further, we test the effect of age in the
    decision-making process and find that age has a significant
    positive influence on the decision to refer stage (coefficient:
    .036).

    51C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    Discussion

    This paper develops a three-stage model to analyze the
    decision-making process of consumers in mobile viral marketing
    campaigns. This is an important area to study because companies
    actively approach only a small number of consumers in viral
    marketing campaigns. Therefore, additional information about
    these consumers, their decision-making processes and the factors
    that influence the consumers may help determine the success or
    failure of viral marketing campaigns. Only a few extant studies
    focus on mobile viral marketing campaigns. Due to the increased
    use and penetration rate of cell phones and smartphones, most
    consumers can be addressed via this new medium and channel.
    Furthermore, cell phones combine unique characteristics such as
    ubiquitous computing, always on and immediate reactions, thus
    making mobile phones an attractive marketing channel for viral
    marketing campaigns.

    The three-stage model approach allows us to gain a deeper
    understanding of consumers’ decision-making processes in
    mobile viral marketing campaigns. This study has produced
    several key findings.

    The first key finding is the important role of consumers
    who place high importance on the purposive value and
    entertainment value of a message during the decision-making
    process. We find that the entertainment value significantly
    influences all three stages. Purposive value significantly
    influences the interest stage and the decision to refer stage,
    but it does not influence the reading stage. This finding is
    relevant when conducting a mobile viral marketing campaign.
    To attract customer attention, and thus to successfully pass the
    reading stage, companies should develop campaigns that
    entertain customers. To have a significant influence on the
    decision to refer, it is important to address consumers who
    place importance on both purposive and entertainment value.
    However, Dholakia, Bagozzi, and Pearo (2004) found that in
    online communities, purposive value has no direct effect on
    participation behavior. The differences between their results and
    our results can potentially be attributed to the differences between
    online technology and cell phones. We suggest that purposive
    value is mobile-specific because the mobile setting differs from
    the Internet. People tend to spend a considerable amount of
    time in online communities and therefore have potentially large
    amounts of content to read. This makes it difficult to identify the
    content that may be meaningful to the contacts. On the contrary, at
    least to date, customers receive a limited amount of mobile text
    messages. Thus, the purposive value can be judged, and if
    customers believe that the text message is useful and has purpose,
    they will be interested in it and will eventually decide to forward it.

    We find that tie strength plays an important role in the last
    stage of the decision-making process and has a negative
    influence on both the reading stage and the decision to refer
    stage. In other words, consumers are more likely to pass
    messages on to weak ties (i.e., low-quality contacts). Further,
    usage intensity has a positive influence at the 10-percent level,
    which indicates that heavy users may be influential in mobile
    viral marketing campaigns because they have a lower threshold
    to pass information to their contacts. Thus, heavy users are

    more influential because of their communication habits. An
    interesting finding is that degree centrality has no influence on
    the decision-making process.

    Our results indicate that one reason for the failure of mobile
    viral marketing campaigns is that consumers tend to forward
    messages to consumers on whom they have limited impact.
    Consumers with low-quality contacts (i.e., weak ties) are more
    likely to forward the message because the perceived risk,
    which can include social sanctions, of forwarding a message is
    low. Accordingly, the results of this study indicate a behavior
    that might limit the impact of viral campaigns. Specifically,
    customers who predominantly possess weak ties are more
    likely to read the message, and they are more likely to pass it
    on to other customers with predominantly weak ties. In
    contrast, the receivers of the message tend to make their
    purchase decisions based on the content that they receive from
    high-quality (i.e., strong tie) contacts because such ties are
    perceived to be more trustworthy when making a purchase
    decision (Rogers 1995). Thus, the viral process may lead to a
    high number of referrals that are ignored by their receivers,
    thus potentially limiting the success of the campaign. Future
    research should therefore examine the circumstances under
    which consumers make their purchase decisions and the products
    that they choose based on recommendations from strong and
    weak ties.

    This study has several limitations that open additional
    avenues for future research. First, because of our setting and
    because we conducted a viral marketing campaign in a mobile
    environment via text messages, we were not able to directly
    observe the referrals made. In our study, this variable is
    self-reported via a survey, which is a limitation of the study.
    Further research should conduct an experimental setting where
    it is possible to observe the forwarding behavior using
    behavioral data rather than survey data. Second, the partici-
    pants of this study were members of an opt-in program
    and had already agreed to receive mobile advertising text
    messages for advertising reasons. Therefore, it remains
    unclear how consumers who have not consented to receiving
    messages would react to unsolicited mobile advertising
    messages. Third, mobile marketing is still an emerging field
    in comparison to e-mail marketing. Therefore, it is likely that
    consumers will pay attention to these (mobile marketing)
    campaigns because they are rather novel. It remains to be seen
    how these results may change with the increasing prevalence
    of mobile marketing campaigns in the future. Fourth, we
    studied only one product category, a new music CD. Future
    research should analyze what products or services are (more or
    less) suitable for mobile viral marketing campaigns. Fifth, in
    this study, we only focused on data from the responses of
    consumers who were seeded by the company. To further
    generalize the results, future research could also analyze
    consumers who receive a message from a friend. Finally, we
    only analyzed mobile viral marketing via text messages. Future
    studies could analyze and compare the findings with mobile
    viral marketing campaigns using media-rich formats such as
    multimedia messages because these formats can offer more
    entertaining content to recipients.

    52 C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    Appendix A. Measurement Scales

    Entertainment value
    (Cronbach’s α = .804)

    I want to entertain my friends by sending enjoyable
    information.
    Information exchange is fun by itself.
    It is a good way to spend time in an enjoyable way.

    Purposive value
    (Cronbach’s α = .738)

    I feel like spreading information I have discovered
    to my friends.
    I want to send information to my friends who may
    be interested in it.

    Usage intensity Number of mobile text messages each survey
    participant wrote per day.

    Network items
    (Burt 1984)

    Degree centrality (=number of contacts the respondent
    names): Looking back over the last six months, who are
    the people with whom you discussed an important
    personal matter? Please write their first names or initials
    in the boxes below.
    Tie strength: How close do you feel to these people?

    Note: Items for entertainment value & purposive value on seven-point Likert

    Appendix B. Sequential Logit Model Specification

    Consider the following model (cf. De Bruyn and Lilien 2008):

    Y = 1 if the recipient has not read the text message.
    Y = 2 if the recipient has read the text message but has not

    visited the website.
    Y = 3 if the recipient has visited the website but has not

    forwarded the message.
    Y = 4 if the recipient has forwarded the message.

    The probabilities can be written as follows (Amemiya 1975):

    P1(Y = 1) = F(β1′x)
    P2(Y = 2) = [1 − F(β1′x)]F(β2′x)
    P3(Y = 3) = [1 − F(β1′x)][1 − F(β2′x)]F(β3′x)
    P4(Y = 4) = [1 − F(β1′x)][1 − F(β2′x)][1 − F(β3′x)].

    The parameters β1 are estimated for the entire sample by
    dividing the sample into those who read the text message and those
    who did not. The parameters β2 are estimated from the subsample
    of recipients who read the text message by dividing it into two
    groups: those who visited the website and those who did not. The
    parameters β3 are estimated from the subsample of recipients who
    visited the website by dividing the subsample into two groups:
    those who forwarded the message and those who did not.

    The likelihood functions for the above sequential logit model
    can be maximized by sequentially maximizing the likelihood
    functions of the three dichotomous models (De Bruyn and Lilien
    2008; Maddala 1983).

    References

    Amemiya, Takeshi (1975), “Qualitative Response Models,” Annals of
    Economic and Social Measurement, 4, 3, 363–72.

    Bacile, Todd J., Christine Ye, and Esther Swilley (2014), “Consumer Co-
    production of Personal Media Marketing Communication: The Case of
    Mobile Coupons,” Journal of Interactive Marketing (forthcoming).

    scale. Tie strength measured on five-point Likert scale.

    Bampo, Mauro, Michael T. Ewing, Dineli R. Mather, David Stewart, and Mark
    Wallace (2008), “The Effects of the Social Structure of Digital Networks on
    Viral Marketing Performance,” Information Systems Research, 19, 3,
    273–90.

    Bettman, James R. (1979), An Information Processing Theory of Consumer
    Choice. Reading, MA: Addison-Wesley.

    Bian, Yanjie (1997), “Bringing Strong Ties Back In: Indirect Ties, Network
    Bridges, and Job Searches in China,” American Sociological Review, 62, 3,
    366–85.

    Bishop, Yvonne M.M., Stephen E. Fienberg, and Paul W. Holland (1975),
    Discrete Multivariate Analysis. Cambridge, MA: MIT Press.

    Bone, Paula Fitzgerald (1995), “Word-of-Mouth Effects on Short-term and
    Long-term Product Judgments,” Journal of Business Research, 32, 3,
    213–23.

    Borgatti, Stephen P. (2005), “Centrality and Network Flow,” Social Networks,
    27, 55–71.

    Bowman, Douglas and Das Narayandas (2001), “Managing Customer-initiated
    Contacts with Manufacturers: The Impact on Share of Category Require-
    ments and Word-of-Mouth Behavior,” Journal of Marketing Research, 38,
    3, 281–97.

    Brown, Jacqueline Johnson and Peter H. Reingen (1987), “Social Ties and
    Word-of-Mouth Referral Behavior,” Journal of Consumer Research, 14, 3,
    350–62.

    Brown, Jo, Amanda J. Broderick, and Nick Lee (2007), “Word of Mouth
    Communication Within Online Communities: Conceptualizing the Online
    Social Network,” Journal of Interactive Marketing, 21, 3, 2–20.

    Burt, Ronald S. (1984), “Network Items and the General Social Survey,” Social
    Networks, 6, 4, 293–339.

    Chandon, Pierre, Brian Wansink, and Gilles Laurent (2000), “A Benefit
    Congruency Framework of Sales Promotion Effectiveness,” The Journal of
    Marketing, 64, 4, 65–81.

    Czepiel, John A. (1974), “Word of Mouth Processes in the Diffusion of a
    Major Technological Innovation,” Journal of Marketing Research, 11, 2,
    172–80.

    De Angelis, Matteo, Andrea Bonezzi, Alessandro M. Peluso, Derek D. Rucker,
    and Michele Costabile (2012), “On Braggarts and Gossips: A Self-
    Enhancement Account of Word-of-Mouth Generation and Transmission,”
    Journal of Marketing Research, 49, 4, 551–63.

    De Bruyn, Arnaud and Gary Lilien (2008), “A Multi-stage Model of Word-of-
    Mouth Influence Through Viral Marketing,” International Journal of
    Research in Marketing, 25, 3, 151–63.

    De Matos, Celso A. and Carlos A.V. Rossi, (2008), “Word-of-Mouth
    Communications in Marketing: A Meta-analytic Review of the Antecedents
    and Moderators,” Journal of the Academy of Marketing Science, 36, 4,
    578–96.

    Dholakia, Utpal M., Richard P. Bagozzi, and Lisa Pearo (2004), “A Social
    Influence Model of Consumer Participation in Network- and Small-group-
    based Virtual Communities,” International Journal of Research in Marketing,
    21, 3, 241–63.

    Dickinger, Astrid and Mirella Kleijnen (2008), “Coupons Going Wireless:
    Determinants of Consumer Intentions to Redeem Mobile Coupons,”
    Journal of Interactive Marketing, 22, 3, 23–39.

    Drossos, Dimitris, George M. Giaglis, George Lekakos, Flora Kokkinaki,
    and Maria G. Stavraki (2007), “Determinants of Effective SMS
    Advertising: An Experimental Study,” Journal of Interactive Marketing,
    7, 2, 16–27.

    East, Robert, Kathy Hammond, and Wendy Lomax (2008), “Measuring the Impact
    of Positive and Negative Word of Mouth on Brand Purchase Probability,”
    International Journal of Research in Marketing, 25, 3, 215–24.

    EITO (Feb. 2012), “More Than Five Billion Mobile Phone Users,” http://www.
    eito.com/press/Press-Releases-2010/More-than-five-billion-mobile-phone-users
    Accessed 13. Feb. 2012.

    Fischer, Claude S. (1982), To Dwell Among Friends — Personal Networks in
    Town and City. Chicago: The University of Chicago Press.

    Fox, John (1997), Applied Regression Analysis, Linear Models, and Related
    Methods. Thousand Oaks: Sage.

    Frambach, Ruud T., Henk C. Roest, and Trichy V. Krishnan (2007), “The
    Impact of Consumer Internet Experience on Channel Preference and Usage

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0005

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0005

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0375

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0375

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0375

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0010

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0010

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0010

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0015

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0015

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0020

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0020

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0020

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0025

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0030

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0030

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0030

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0035

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0035

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0040

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0040

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0040

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0040

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0165

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0165

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0165

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0045

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0045

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0045

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0050

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0050

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0055

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0055

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0055

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0060

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0060

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0060

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0065

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0065

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0065

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0070

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0070

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0070

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0075

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0075

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0075

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0075

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0080

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0080

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0080

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0080

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0085

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0085

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0085

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0090

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0090

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0090

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0095

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0095

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0095

    http://www.eito.com/press/Press-Releases-2010/More-than-five-billion-mobile-phone-users

    http://www.eito.com/press/Press-Releases-2010/More-than-five-billion-mobile-phone-users

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0105

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0105

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0110

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0110

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0115

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0115

    53C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    Intentions Across the Different Stages of the Buying Process,” Journal of
    Interactive Marketing, 21, 2, 26–41.

    Frenzen, Jonathan and Kent Nakamoto (1993), “Structure, Cooperation, and the
    Flow of Market Information,” The Journal of Consumer Research, 20, 30,
    360–75.

    Gatignon, Hubert and Thomas S. Robertson (1991), “Innovative Decision
    Processes,” in Handbook of Consumer Behavior,” Thomas S. Trobertson
    and Harold H. Kassarjian, editors. NJ: Prentice-Hall: Englewood Cliffs.
    p. 316–48.

    Godes, David and Dina Mayzlin (2005), “Using Online Conversations to Study
    Word-of-Mouth Communication,” Marketing Science, 23, 4, 545–60.

    ——— and Dina Mayzlin (2009), “Firm-created Word-of-Mouth Commu-
    nication: Evidence From a Field Test,” Marketing Science, 28, 4,
    721–39.

    Goldenberg, Jacob, Sangman Han, Donald R. Lehmann, and Jae Weon Hong
    (2009), “The Role of Hubs in the Adoption Process,” Journal of Marketing,
    73, 3, 1–13.

    Granovetter, Mark (1973), “The Strength of Weak Ties,” American Journal of
    Sociology, 78, 6, 1360–80.

    Hennig-Thurau, Thorsten, Kevin P. Gwinner, Gianfranco Walsh, and Dwayne D.
    Gremler (2004), “Electronic Word-of-Mouth via Consumer-opinion Plat-
    forms: What Motivates Consumers to Articulate Themselves on the Internet?,”
    Journal of Interactive Marketing, 18, 1, 38–52.

    Herr, Paul M., Frank R. Kardes, and John Kim (1991), “Effects of Word-of-
    Mouth and Product-attribute Information on Persuasion: An Accessibility-
    Diagnosticity Perspective,” Journal of Consumer Research, 17, 4,
    454–62.

    Hinz, Oliver, Bernd Skiera, Christian Barrot, and Jan Becker (2011), “Seeding
    Strategies for Viral Marketing: An Empirical Comparison,” Journal of
    Marketing, 75, 6, 55–71.

    Iyengar, Raghuram, Christophe Van den Bulte, and Thomas W. Valente (2011),
    “Opinion Leadership and Social Contagion in New Product Diffusion,”
    Marketing Science, 30, 2, 195–212.

    Kiss, Christina and Martin Bichler (2008), “Identification of Influencers —
    Measuring Influence in Customer Networks,” Decision Support Systems,
    46, 1, 233–53.

    Kleijnen, Mirella, Annouk Lievens, Ko de Ruyter, and Martin Wetzels (2009),
    “Knowledge Creation Through Mobile Social Networks and its Impact on
    Intentions to Use Innovative Mobile Services,” Journal of Service Research,
    12, 1, 15–35.

    Kratzer, Jan and Christopher Lettl (2009), “Distinctive Roles of Lead Users and
    Opinion Leaders in the Social Networks of Schoolchildren,” Journal of
    Consumer Research, 36, 4, 646–59.

    Krishnamurthy, Sandeep (2001), “Viral Marketing: What Is It and Why Should
    Every Service Marketer Care?,” Journal of Services Marketing, 15, 6, 422–4.

    Lavidge, Robert J. and Gary A. Steiner (1961), “A Model for Predictive
    Measurements of Advertising Effectiveness,” Journal of Marketing, 25, 6,
    59–62.

    Levin, Daniel Z. and Rob Cross (2004), “The Strength of Weak Ties You Can
    Trust: The Mediating Role of Trust in Effective Knowledge Transfer,”
    Management Science, 50, 11, 1477–90.

    Lin, Nan, Walter M. Ensel, and John C. Vaughn (1981), “Social Resources and
    Strength of Ties: Structural Factors in Occupational Status Attainment,”
    American Sociological Review, 46, 4, 393–405.

    Maddala, G.S. (1983), Limited Dependent and Qualitative Variables in
    Econometrics. Cambridge: Cambridge University Press.

    Mare, Robert D. (1980), “Social Background and School Continuation Decisions,”
    Journal of the American Statistical Association, 75, 370, 295–305.

    Marsden, Peter V. and Karen E. Campbell (1984), “Measuring Tie Strength,”
    Social Forces, 63, 2, 482–501.

    ——— (2002), “Egocentric and Sociocentric Measures of Network Central-
    ity,” Social Networks, 24, 4, 407–22.

    Maxham, James G. and Richard G. Netemeyer (2002), “A Longitudinal Study
    of Complaining Customers’ Evaluations of Multiple Service Failures and
    Recovery Efforts,” Journal of Marketing, 66, 4, 57–71.

    McCallister, Lynne and Claude S. Fischer (1978), “A Procedure for
    Surveying Personal Networks,” Sociological Methods & Research, 7, 2,
    131–48.

    Moldovan, Sarit, Jacob Goldenberg, and Amitava Chattopadhyay (2011),
    “The Different Roles of Product Originality and Usefulness in Generating
    Word-of-Mouth,” International Journal of Research in Marketing, 28, 2,
    109–19.

    Neslin, Scott A., C. Henderson, and J. Quelch (1985), “Consumer Promotions
    and the Acceleration of Product Purchases,” Marketing Science, 4,
    147–65.

    Norman, Andrew T. and Cristel A. Russell (2006), “The Pass-along
    Effect: Investigating Word-of-Mouth Effects on Online Survey
    Procedures,” Journal of Computer-Mediated Communication, 11, 4,
    1085–103.

    Okazaki, Shintaro (2008), “Determinant Factors of Mobile-based Word-of-
    Mouth Campaign Referral Among Japanese Adolescents,” Psychology and
    Marketing, 25, 8, 714–31.

    Palka, Wolfgang, Key Pousttchi, and Dietmar G. Wiedemann (2009), “Mobile
    Word-of-Mouth — A Grounded Theory of Mobile Viral Marketing,”
    Journal of Information Technology, 24, 2, 172–85.

    Phelps, Joseph E., Regina Lewis, Lynne Mobilio, David Perry, and Niranjan
    Raman (2004), “Viral Marketing or Electronic Word-of-Mouth Advertising:
    Examining Consumer Responses and Motivations to Pass Along Email,”
    Journal of Advertising Research, 44, 4, 333–48.

    Porter, Lance and Guy J. Golan (2006), “From Subservient Chickens to Brawny
    Men: A Comparison of Viral Advertising to Television Advertising,”
    Journal of Interactive Advertising, 6, 2, 26–33.

    Portes, A. (1998), “Social Capital: Its Origins and Applications in Modern
    Sociology,” Annual Review of Sociology, 24, 1–24.

    Reagans, Ray and Bill McEvily (2003), “Network Structure and Knowledge
    Transfer: The Effects of Cohesion and Range,” Administrative Science
    Quarterly, 48, 2, 240–67.

    Reichhart, Philipp, Christian Pescher, and Martin Spann (2013), “A
    Comparison of the Effectiveness of E-mail Coupons and Mobile Text
    Message Coupons for Digital Products,” Electronic Markets, 23, 3,
    217–25.

    Reingen, Peter H. and Jerome B. Kernan (1986), “Analysis of Referral
    Networks in Marketing: Methods and Illustration,” Journal of Marketing
    Research, 23, 4, 370–8.

    Rogers, Everett M. and David G. Cartano (1962), “Methods of Measuring
    Opinion Leadership,” Public Opinion Quarterly, 26, 3, 435–41.

    ——— (1995), Diffusion of Innovations. New York: The Free Press.
    Ryu, Gangseog and Lawrence Feick (2007), “A Penny for Your Thoughts:

    Referral Reward Programs and Referral Likelihood,” Journal of Marketing,
    71, 1, 84–94.

    Steenkamp, Jan-Benedict E.M. and Katrijn Gielens (2003), “Consumer and
    Market Drivers of the Trial Probability of New Consumer Packaged
    Goods,” Journal of Consumer Research, 30, 3, 368–84.

    Straits, Bruce C. (2000), “Ego’s Important Discussants or Significant People:
    An Experiment in Varying the Wording of Personal Network Name
    Generators,” Social Networks, 22, 2, 124–40.

    Sultan, Fareena, Andrew J. Rohm, and Tao Gao (2009), “Factors
    Influencing Consumer Acceptance of Mobile Marketing: A Two-
    country Study of Youth Markets,” Journal of Interactive Marketing,
    23, 4, 308–20.

    Sundaram, D.S., Kaushik Mitra, and Cynthia Webster (1998), “Word-of-Mouth
    Communication: A Motivational Analysis,” Advances in Consumer
    Research, 25, 527–31.

    Trusov, Michael, Randolph E. Bucklin, and Koen Pauwels (2009),
    “Effects of Word-of-Mouth Versus Traditional Marketing: Findings
    From an Internet Social Networking Site,” Journal of Marketing, 73, 5,
    90–102.

    Tsang, Melody M., Shu-Chun Ho, and Ting-Peng Liang (2004), “Consumer
    Attitudes Toward Mobile Advertising: An Empirical Study,” International
    Journal of Electronic Commerce, 8, 3, 65–78.

    Van den Bulte, Christophe and Yogesh Joshi (2007), “New Product Diffusion
    with Influentials and Imitators,” Marketing Science, 26, 3, 400–21.

    Van der Lans, Ralf, Gerrit Van Bruggen, Jehoshua Eliashberg, and
    Berend Wierenga (2010), “A Viral Branching Model for Predicting
    the Spread of Electronic Word-of-Mouth,” Marketing Science, 29, 2,
    348–65.

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0115

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0115

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0120

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0120

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0120

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0260

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0260

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0260

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0260

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0130

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0130

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0125

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0125

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0125

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0135

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0135

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0140

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0140

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0145

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0145

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0145

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0150

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0150

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0150

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0150

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0155

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0155

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0155

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0160

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0160

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0170

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0170

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0170

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0175

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0175

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0175

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0180

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0180

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0180

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0185

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0185

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0190

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0190

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0190

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0195

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0195

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0195

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0200

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0200

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0200

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0205

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0205

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0210

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0210

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0220

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0220

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0215

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0215

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0225

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0225

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0225

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0230

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0230

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0230

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0235

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0235

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0235

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0240

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0240

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0240

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0245

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0245

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0245

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0245

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0265

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0265

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0265

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0270

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0270

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0270

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0275

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0275

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0275

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0280

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0280

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0280

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0285

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0285

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0290

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0290

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0290

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0295

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0295

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0295

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0295

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0300

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0300

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0300

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0310

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0310

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0305

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0315

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0315

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0315

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0320

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0320

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0320

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0325

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0325

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0325

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0330

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0330

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0330

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0330

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0335

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0335

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0335

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0340

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0340

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0340

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0345

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0345

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0345

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0350

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0350

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0355

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0355

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0355

    54 C. Pescher et al. / Journal of Interactive Marketing 28 (2014) 43–54

    van Hoye, Greet and Filip Lievens (1994), “Tapping the Grapevine: A Closer
    Look at Word-of-Mouth as a Recruitment Source,” Journal of Applied
    Psychology, 94, 2, 341–52.

    Wirtz, Jochen and Patricia Chew (2002), “The Effects of Incentives, Deal
    Proneness, Satisfaction and Tie Strength on Word-of-Mouth Behaviour,”
    International Journal of Service Industry Management, 13, 2, 141–62.

    Wojnicki, Andrea C. and David B. Godes (2008), “Word-of-Mouth as Self-
    Enhancement,” Working Paper. University of Toronto/Harvard Business
    School.

    Christian Pescher: Research interests include B2B and B2C e-commerce,
    innovation, and social networks in marketing and forecasting.

    Philipp Reichhart: Research interests include e- and m-commerce, mobile
    marketing, consumer behavior, word of mouth, social network and location-
    based services.

    Martin Spann is a professor of electronic commerce and digital markets
    at the Munich School of Management, Ludwig-Maximilians-University Munich,
    Germany. His research interests include e-commerce, mobile marketing,
    prediction markets, interactive pricing mechanisms, and social networks. He has
    published in Management Science, Marketing Science, Journal of Marketing,
    Information Systems Research, MIS Quarterly, Journal of Product Innovation
    Management, Journal of Interactive Marketing, Decision Support Systems, and
    other journals.

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0360

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0360

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0360

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0365

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0365

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0365

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0370

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0370

    http://refhub.elsevier.com/S1094-9968(13)00035-2/rf0370

      Consumer Decision-making Processes in Mobile Viral Marketing Campaigns
      Introduction
      Related Literature
      Viral Marketing and Factors that Influence Consumer Referral Behavior
      Decision-making Process and Specifics of the Mobile Environment
      Development of Hypotheses
      Psychographic Indicators of Consumer Characteristics
      Sociometric Indicators of Consumer Characteristics
      Empirical Study
      Goal and Research Design
      Measures
      Model
      Results
      Descriptive Statistics and Bias Tests
      Three-stage Decision-making Model
      Entertainment Value and Purposive Value (H1 and H2)
      Usage Intensity (H3)
      Tie Strength (H4)
      Degree Centrality (H5)

      Discussion
      Appendix A. Measurement Scales
      Appendix B. Sequential Logit Model Specification
      References

    https://doi.org/10.1177/2056305119847516

    Creative Commons Non Commercial CC BY-NC: This article is distributed under the terms of the Creative Commons Attribution-
    NonCommercial 4.0 License (http://www.creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction

    and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages
    (https://us.sagepub.com/en-us/nam/open-access-at-sage).

    Social Media + Society
    July-September 2019: 1 –13
    © The Author(s) 2019
    Article reuse guidelines:
    sagepub.com/journals-permissions
    DOI: 10.1177/2056305119847516
    journals.sagepub.com/home/sms

    Original Article

    Introduction: The Disruption of
    Traditional Advertising

    For decades, the advertising industry was based on an asym-
    metrical communication model, where marketers would
    engage audiences via paid media channels. The advent of
    social media platforms completely transformed the general
    media landscape, along with the advertising model, as audi-
    ences shifted from the role of content receivers to content
    creators, distributors, and commentators (Keller, 2009; Scott,
    2015). Simply put, the empowerment of audiences from
    mere viewers to active content distributors effectively flipped
    the advertising model on its head. Where paid media (in this
    case, advertising) was once supported by earned and owned
    media, the modern advertising model uses owned, shared,
    and earned media as the key media planning strategy, sup-
    ported by paid media (Pearson, 2016). Recognizing the
    increased potential for free content distribution, marketers
    realized that creating highly engaging advertising content
    could expand potential reach, a cheaper and more credible
    tactic than traditional paid advertising (Cho, Huh, & Faber,
    2014; Golan & Zaidner, 2008). This fundamental disruption
    of the advertising and marketing world led to growing
    interest in content creation, co-creation, and distribution.

    Generally defined, advertising refers to the “paid non-
    personal communication from an identified sponsor using
    mass media to persuade or influence an audience” (Wells,
    Moriarty, & Burnett, 2000, p. 6). Consistent with most, but
    not all, of these requirements, Porter and Golan (2006)
    defined viral advertising as “unpaid peer-to-peer communi-
    cation of provocative content originating from an identified
    sponsor using the Internet to persuade or influence an audi-
    ence to pass along the content to others” (p. 33).

    The expanding literature on viral advertising recognizes
    the ways in which peer-to-peer distribution of advertising
    content are redefining the industry. When examined holisti-
    cally, the literature has several limitations. First, existing
    viral advertising research is limited primarily to advertising
    spread within one step of the original source (e.g., predicting
    the number of message shares), while information on social

    847516 SMSXXX10.1177/2056305119847516Social Media + SocietyHimelboim and Golan
    research-article20192019

    1University of Georgia, USA
    2University of South Florida, USA

    Corresponding Author:
    Itai Himelboim, Department of Advertising and Public Relations, Grady
    College of Journalism and Mass Communication, University of Georgia,
    Athens, GA 30602-3018, USA.
    Email: itai@uga.edu

    A Social Networks Approach to Viral
    Advertising: The Role of Primary,
    Contextual, and Low Influencers

    Itai Himelboim1 and Guy J. Golan2

    Abstract
    The diffusion of social networking platforms ushered in a new age of peer-to-peer distributed online advertising content,
    widely referred to as viral advertising. The current study proposes a social networks approach to the study of viral advertising
    and identifying influencers. Expanding beyond the conventional retweets metrics to include Twitter mentions as connection
    in the network, this study identifies three groups of influencers, based on their connectivity in their networks: Hubs, or
    highly retweeted users, are Primary Influencers; Bridges, or highly mentioned users who associate connect users who would
    otherwise be disconnected, are Contextual Influencers, and Isolates are the Low Influence users. Each of these users’ roles
    in viral advertising is discussed and illustrated through the Heineken’s Worlds Apart campaign as a case study. Providing a
    unique examination of viral advertising from a network paradigm, our study advances scholarship on social media influencers
    and their contribution to content virality on digital platforms.

    Keywords
    viral advertising, social networks, Twitter, viral marketing, social media influencers

    https://uk.sagepub.com/en-gb/journals-permissions

    https://journals.sagepub.com/home/sms

    mailto:itai@uga.edu

    http://crossmark.crossref.org/dialog/?doi=10.1177%2F2056305119847516&domain=pdf&date_stamp=2019-07-21

    2 Social Media + Society

    media often spreads beyond a single step from the original
    source. Second, in focusing on the characteristics of shared
    content or sharing users, researchers make the assumption
    that all shares are equal in terms of their impact. However,
    sharing-impact varies among users, based on their connectiv-
    ity. Third, the metaphor of virality, the idea that content is
    spread gradually among individuals and their immediate
    contacts, may not fully capture what is often a complex
    multi-actor process of content distribution. Cascades of con-
    tent distribution were found to be centered on a small num-
    ber of distributors, creating a hierarchical, rather than
    egalitarian, pattern of content distribution (Baños, Borge-
    Holthoefer, & Moreno, 2013).

    This study proposes a social networks approach to address
    these limitations, using Heineken’s Worlds Apart campaign
    as a case study. Data are collected for all Twitter users post-
    ing links to the original advertisement on YouTube, and the
    subsequent retweets and mention relationships. While a
    growing body of scholarship examines the potential impact
    of social media influencers in online marketing campaigns,
    they often treat all influencers as one and the same (Evans,
    Phua, Lim, & Jun, 2017; Phua & Kim, 2018).

    We argue that different types of influencers impact social
    networks in different degrees and ways. Informed by a body
    of scholarship in social networks, we propose that there are
    three types of influencers: primary, contextual, and low
    influencers. Primary influencers are hubs, users who attract
    large and disproportionate retweets from other users in the
    network. Contextual influencers play a role of bridges in the
    network by providing context regarding the overall discus-
    sion and thus help to understand the distribution of content
    beyond the quantity of retweets. Low influencers are users
    who shared a link to online content; however, these users
    were neither retweeted nor mentioned by anyone else in the
    network. While low influencers have limited individual con-
    tributions to content distribution, their aggregate influence is
    substantial.

    Social Media Influencers

    An emergent body of scholarship in the field of marketing,
    advertising, and public relations examines the intermediary
    function of influencers between brands and consumers, orga-
    nizations, and stakeholders in social media engagement (De
    Veirman, Cauberghe, & Hudders, 2017; Freberg, Graham,
    McGaughey, & Freberg, 2011; Phua, Jin, & Kim, 2016). At
    the most basic level, influencer is identified by their number
    of followers and their ability to impact social media conver-
    sation regarding brands or topics (Watts & Dodds, 2007).
    While the term social media influencer is ubiquitously
    applied, there are few formal definitions of what an influ-
    encer actually is. Brown and Hayes (2008) defined influenc-
    ers broadly as individuals who hold influence over potential
    buyers of a brand or product to aid in the marketing activities
    of the brand. Others narrow the definition of an influencer to

    reflect on the latest marketing trend in which social media
    celebrities are paid by advertisers to promote products
    (Abidin, 2016; Evans et al., 2017; Senft, 2008).

    Moving beyond definitions, scholars attempt to theorize
    why it is that some social media users grow more influential
    than others via relationship building. To explain the influ-
    ence of influencers, media scholars often depend on the
    parasocial relationship explanation (Daniel, Crawford, &
    Westerman, 2018; Lou & Yuan, 2018; Rasmussen, 2018).
    Moving beyond a temporary parasocial interaction (as origi-
    nally conceptualized by Horton & Wohl, 1956), parasocial
    relationships between audience members and mediated
    characters are formed over a period of time and provide
    audience members with a sense of engagement with on-
    screen characters (Klimmt, Hartmann, & Schramm, 2006;
    Tukachinsky, 2010). In the context of social media, such
    parasocial relationships provide influencers with unique
    social capital that leads to audience trust (Tsai & Men, 2017;
    Tsiotsou, 2015).

    Indeed, the central role of trust in parasocial relation-
    ships may provide a plausible explanation for the influencer
    phenomenon and the rise of influencer marketing (Audrezet,
    De Kerviler, & Moulard, 2018). Trust has been identified as
    a key predictor of several advertising consequences includ-
    ing recall, attitude, and likelihood to share (Cho et al.,
    2014; Lou & Yuan, 2018; Okazaki, Katsukura, & Nishiyama,
    2007). Abidin (2016), building on the concept of parasocial
    relations, identified four ways that influencers appropriated
    and mobilized intimacies: commercial, interactive, recipro-
    cal, and disclosive. Influencers are identified not only based
    on their sheer number of such parasocial relationships, such
    as subscribers or followers on social media, but primarily
    based on their ability to impact social media conversation
    and subsequent behavior regarding brands or topics (Watts
    & Dodds, 2007).

    We propose to complement existing conceptualization of
    influencers by shifting the focus from influencers’ engage-
    ment or the nature of individual connections with them, to
    their ability to reach large, unique, and relevant audiences
    and to shape the conversation about brands and topics. It is
    the distribution of content that allows influencers to influ-
    ence, and therefore provides a key theoretical framework for
    identifying social media influencers. We next discuss viral
    advertising as a theoretical framework for content reach, fol-
    lowed by its limitations. We then take a social networks
    approach to theorize social media influencers, bridging both
    bodies of literature.

    Viral Advertising

    As explained by Golan and Zaidner (2008), there are several
    key differences between viral and traditional advertising.
    First, viral advertising earns audience eyeballs, as opposed to
    paying for them. This is a major departure from the tradi-
    tional advertising exchange, where brands purchase media

    Himelboim and Golan 3

    space and interrupt an audience’s media consumption with
    advertisements. Second, viral advertisements provide such
    increased value to audiences that they transform audiences
    from passive content receivers to active social distributors
    who play a key role in advertisement distribution. Third,
    although there are limited studies speaking to this point, it is
    worth noting that information sharing has been shown to
    increase a user’s followers on Twitter, which is a long-term
    benefit for marketers (Hemsley, 2016).

    What Makes Advertising Go Viral?

    Why do some advertisements receive wide-scale viewership
    via audience distribution, while others do not? Scholars offer
    different approaches to this question, one focusing on con-
    tent characteristics (Brown, Bhadury, & Pope, 2010; Golan
    & Zaidner, 2008; Petrescu, 2014) and another examining
    virality attribute factors such as brand relationships (Hayes
    & King, 2014; Ketelaar et al., 2016; Shan & King, 2015).

    Porter and Golan (2006) specifically identify provocative
    content as contributing to advertising virality. Other studies
    identify appeals to sexuality, as well as shock, violence, and
    other inflammatory content as key elements of message viral-
    ity (Brown et al., 2010; Golan & Zaidner, 2008; Petrescu,
    2014). Eckler and Bolls (2011) argue that the emotional tone
    of advertisement is directly related to audience intention to
    forward ads to others. Yet advertising content, tone, and emo-
    tion cannot fully account for ad virality. Scholars point to a
    variety of other variables significantly related to advertising
    virality including brand relationship (Hayes & King, 2014;
    Ketelaar et al., 2016; Shan & King, 2015), attitude toward the
    ad (Hsieh, Hsieh, & Tang, 2012; Huang, Su, Zhou, & Liu,
    2013), and credibility of the sender/referrer (Cho et al., 2014;
    Phelps, Lewis, Mobilio, Perry, & Raman, 2004).

    Hayes, King, and Ramirez (2016) advanced research on
    viral advertising by illustrating the importance of interper-
    sonal relationship strength in referral acceptance. Their study
    suggested that individuals are motivated to share advertising
    content based on reputational enhancement and reciprocal
    altruism. Alhabash and McAlister (2015) conceptualized
    virality based on three key components: viral reach, affective
    evaluation, and message deliberation. The authors linked
    virality and online audience behaviors in what they refer to
    as viral behavioral intentions (VBI). This linkage is sup-
    ported by later research indicating that the virality of digital
    advertising is often related to several VBIs motivated by a
    variety of audience-based characteristics (Alhabash, Baek,
    Cunningham, & Hagerstrom, 2015; Alhabash et al., 2013).

    Limitations of Viral Advertising Research

    In essence, viral advertising represents a “peer-to-peer com-
    munication” strategy that depends on distribution of content
    (Petrescu & Korgaonkar, 2011; Porter & Golan, 2006).
    Despite the fact that most peer-to-peer social media shares

    include multiple distribution phases (e.g., from user A to user
    B to user C), existing viral advertising research is mostly
    limited to one-step advertisement spread (e.g., predicting
    number of message shares). Studies suggest that while con-
    tent may be shared by many users, most viral content is
    spread beyond this single step (Bakshy, Hofman, Mason, &
    Watts, 2011). The body of literature concerning viral adver-
    tising does not examine advertising spread beyond a user’s
    immediate set of connections.

    Second, the literature conceptualizes virality based on
    such sharing metrics as shares or retweets. In doing so, schol-
    ars fail to account for the possibility that the overall impact
    of such user actions may not result in equal content distribu-
    tion outcomes. In fact, studies on virality of content and cas-
    cades of information flow highlight that “popularity is largely
    driven by the size of the largest broadcast” (Goel, Anderson,
    Hofman, & Watts, 2015, p. 180). In other words, it is not only
    the number of consumer-to-consumer interactions but the
    connectivity of these consumers with others that determines
    the impact of viral advertising. One user’s retweet may count
    more than another user.

    A third limitation is the more subtle assumption of virality
    as metaphor. The idea that content is spread gradually from
    one source to that source’s immediate small group of connec-
    tions, to their neighbors, and so on is a powerful metaphor
    that resonates well with many scholars (Miles, 2014; Porter
    & Golan, 2006). However, research shows no foundation for
    such an egalitarian assumption. Connections are distributed
    in a skewed manner across individuals, a phenomenon
    referred to in ways that vary by discipline:

    in economics it goes by the name “fat tails,” in physics it is
    referred to as “critical fluctuations,” in computer science and
    biology it is “the edge of chaos,” and in demographics and
    linguistics it is called “Zipf’s law.” (Newman, 2000)

    At the end of the day, most pieces of shared content are not
    re-shared by others, and thus are spread by very few.
    Similarly, from an advertisement and social media perspec-
    tive, Nielsen (2006) presented the “1-9-90 rule,” suggesting
    that content is created by 1% of users and distributed by 9%
    to the remaining 90% of content receivers. Baños et al.
    (2013) showed that only a small minority of content dis-
    tributors will account for content virality. In addition, Pei,
    Muchnik, Andrade, Zheng, and Makse (2014) suggested
    that “due to the lack of data and severe privacy restrictions
    that limit access to behavioral data required to directly infer
    performance of each user, it is important to develop and
    validate social network topological measures capable to
    identify superspreaders” (p. 8).

    To address these key gaps in the literature of viral adver-
    tising and subsequently our ability to theorize influential
    users in terms of their content diffusion, we take a social net-
    works approach, which focuses on patterns of connectivity
    among users. We propose that social media influencers are

    4 Social Media + Society

    ultimately determined by their position in an issue or brand-
    specific conversation network, allowing their posted content
    to be distributed in a strategic manner. As such, these influ-
    encers play key roles in the virality of any advertising cam-
    paign on social media. A social networks approach, as
    illustrated by Himelboim, Golan, Moon, and Suto (2014)
    provides for a macro-understanding of social media relation-
    ships, content flow, and the role of social media influencers
    within the network.

    The Social Networks Approach

    The social networks conceptual framework shifts the focus
    from individual traits to patterns of social relationships
    (Wasserman & Faust, 1994). Applying a social networks
    approach to social media activity allows researchers to cap-
    ture content virality and identify key social media influenc-
    ers that affect the conversation about a brand and reach key
    groups of consumers. A social network is formed when con-
    nections (“links”) are created among social actors (“nodes”),
    such as individuals and organizations. The collections of
    these connections aggregate into emergent patterns or net-
    work structures. On Twitter, social networks are composed
    of users and the connections they form with other users when
    they retweet, mention, and reply to (Hansen, Shneiderman,
    & Smith, 2011).

    The network approach can bridge the viral advertising
    and social media influencer’s bodies of literature. As dis-
    cussed earlier, social media platforms allow individuals to
    maintain parasocial relationships with influencers (Abidin,
    2016). In the case of Twitter, such engagement is manifested
    in the form of mentions, likes, and retweets. In social net-
    works research, these relationships are conceptualized as
    links in a network.

    The social networks approach allows us to capture the
    distribution of a specific piece of content (i.e., an advertise-
    ment) and identify users in key positions in the network that
    are responsible for the distribution of ads, as social media
    influencers. It should be noted that even in studies on infor-
    mation diffusion in related disciplines, it is quite rare to track
    the virality of a single piece of content, rather than the over-
    all diffusion of messages in a broader conversation.

    Viral advertising research often focuses on the most visi-
    ble type of content that is spread, shared, or retweeted on
    Twitter. Social media influencers are often examined by their
    number of connections in a social media platform (De
    Veirman et al., 2017). However, a link to a video advertise-
    ment, or any other source of paid advertising content, may be
    posted by more than a single user who contributes to its dif-
    fusion. In other words, while the advertisement itself may
    have a single point of origin (e.g., a YouTube video page),
    this advertisement may have multiple users who may account
    for multiple points of origin for distribution on Twitter. While
    a particular video may have gained many views and shares
    on its platform of origin (“gone viral”), not all shares on

    Twitter contributed equally to its virality. We therefore ini-
    tialize our understanding of content distribution patterns by
    asking,

    RQ1: What is the distribution structure of a viral adver-
    tisement on Twitter?

    A single network can have different types of links, or ties,
    that connect its users. On Twitter, users can be connected,
    among others, by relationships of retweets and mentions. A
    network of advertising virality captures users who posted
    content with a hyperlink to a given ad. Such Twitter users
    share a link to a given advertisement via a tweet, expanding
    its reach one step away from the source (YouTube). Some
    studies have examined the overall network structure to
    explain virality. Pei et al. (2014) used social network analysis
    on LiveJournal, Twitter, Facebook, and APS journals and
    found that users who spread the most content were located in
    the K-Core (a metrics of subgroup cohesiveness in the net-
    work). At the node-level, a few users are expected to contrib-
    ute further to the virality by having their tweets shared, or
    retweeted, by many additional users. Such users capture
    virality beyond a single step away from the source. Users
    with many connections in the network are known as social
    hubs (Goldenberg, Libai, & Muller, 2001) or simply Hubs.
    Using computer simulations, Hinz, Skiera, Barrot, and
    Becker (2011) found that seeding messages to hubs outper-
    formed a random seeding strategy and seeding to low-degree
    users, in terms of number of referrals. Kaplan and Haenlein
    (2011) also illustrated the role that hubs play in integrative
    social media and viral marketing campaigns.

    Recognizing that the emergent literature on social media
    influencers is somewhat undermined by the various uses of
    the term influence to reflect different functions of influence,
    we recommend the categorization of influencers into three
    different types, based on the type of relationships, links in the
    network, that makes them central in a network.

    Social networks literature repeatedly shows that given the
    opportunity to interact freely, connections among users will
    be distributed unequally, as a few will enjoy large and dis-
    proportionate number of relationships initiated with them,
    while most will have very few ties. On Twitter, content
    posted by a few users will enjoy major distribution via
    retweeting, while the rest will gain little shares, if any.
    Indeed, Araujo, Neijens, and Vliegenthart (2017), define
    influentials as “users with above average ability to stimulate
    retweets to their own messages” (p. 503), consistent with
    conceptualization of influencers based on impact on content
    distribution (Cha, Haddadi, Benevenuto, & Gummadi, 2010;
    Kwak, Lee, Park, & Moon, 2010). Hubs as conceptualized in
    social networks literature, therefore, are one type of social
    media influencers as conceptualized in social media scholar-
    ship, as each one makes a major contribution to content dis-
    tribution. One type of influencer, from a social networks
    conceptualization, is therefore the Primary Influencer, as it

    Himelboim and Golan 5

    is one of few members responsible for the distribution of
    content in the network. We therefore present the following
    research question:

    RQ2: Which users serve as Primary Influencers in a viral
    advertising network?

    On Twitter, retweets are attributed to the original tweet;
    therefore, operationalizing links in this network only as
    retweets fails to capture information flow beyond one step
    away from a user who shared a link to an ad. In other words,
    since users are unlikely to share the same link more than
    once, the network of retweets will create distinct subsets of
    users, each retweeting a single tweet. These subsets are com-
    pletely, or almost completely, disconnected from one another.
    As discussed earlier, a key limitation of viral advertising lit-
    erature is that studies are limited to the extent they measure
    diffusion from a single source. In order to maximize insights
    from the social networks approach to viral advertising, other
    types of ties should be considered.

    The practice of mentioning users on Twitter, using the @
    symbol, serves two main purposes. First, it associates a post
    with another user (e.g., an individual, an organization, a
    brand), serving as metadata for that tweet. Second, it serves
    as a secondary route of content distribution. When a tweet
    mentions a given user, that tweet will appear on the recipi-
    ent’s Notifications tabs and Home timeline view if the author
    of the tweet follows the sender. Conceptualizing mentions on
    Twitter as links in a social network captures the context of
    the virality of advertisements by connecting users beyond
    immediate retweeting of a single source. In other words, this
    practice bridges the otherwise disconnected subsets of
    retweeting users. In social network literature, bridging is a
    concept that can advance the understanding of advertisement
    virality and the key users who play a key role in it.

    Bridges and Structural Holes

    Burt’s (1992, 2001) theory of structural holes examines
    social actors (e.g., individuals and organizations) in unique
    positions in a social network, where they connect other actors
    that otherwise would be less connected, if connected at all. In
    Burt’s (2005) words, “A bridge is a (strong or weak) relation-
    ship for which there is no effective indirect connection
    through third parties. In other words, a bridge is a relation-
    ship that spans a structural hole” (p. 24). A lack of relation-
    ships among social actors, or groups of actors, in a network
    gives those positioned in structural holes strategic benefits,
    such as control, access to novel information, and resource
    brokerage (Burt, 1992, 2001). Actors that fill structural holes
    are viewed as attractive relationship partners precisely
    because of their structural position and related advantages
    (Burt, 1992, 2001).

    The nature of Twitter retweets, however, rarely allows
    bridges to form as retweets that are associated with an

    original tweet (unless modified retweets are used). In other
    words, the spread of retweets remains within a single step
    away from the author who posted that message. Therefore,
    this additional type of structural characteristic is not enough
    to characterize a new type of influential user in viral adver-
    tising. Conceptualizing a second type of parasocial relation-
    ship on the network—mentions (the inclusion of a reference
    to another Twitter user in a post)—as links in a network
    allows bridges to form as they provide an additional connec-
    tion among users. While mentions do not represent primary
    stages in content distribution, they do provide meaningful
    points of context that allow researchers to better understand
    the overall virality of an advertisement.

    Since content distribution or virality on Twitter does not
    take place in a vacuum but rather is often responsive to the
    broader online conversion, the distribution of any specific
    tweet may be impacted by contextual factors. For example,
    the distribution of a tweet about a pharmaceutical company
    may be impacted by related actors linked to the industry in
    news coverage. On Twitter, users often provide context to
    their posted content, among others, by mentioning related
    users via their handles (@). While such users do not take an
    active role in the conversation, they are nominated, so to
    speak, as influencers in the network, as they provide addi-
    tional explanation for content virality. In other words, they
    allow researchers and practitioners to understand that the vast
    distribution of an ad on Twitter is driven by a larger context.

    We therefore define a second type of social networks-
    driven influencer type as Contextual Influencer—highly
    mentioned users who bridge otherwise separated groups of
    retweeting users.

    RQ3: Which users serve as Contextual Influencers in viral
    advertising networks?

    Beyond a few users in key positions—Hubs or Bridges—
    many users’ content sharing is more limited. Each user con-
    tributes little to advertisement virality, as they reach only
    their immediate Twitter followers. However, as such users
    are often the majority of distribution agents, they ultimately
    make a major contribution to ad virality. We call users who
    are isolated in the network (defined as incurring no retweets
    for their shared video tweets) Low Influence users.

    RQ4: What percentage do Low Influencers make of all
    users in the network?

    Proof of Concept: Heineken’s “Worlds
    Apart” Viral Advertisement

    To illustrate the conceptual framework proposed in the cur-
    rent study, we selected a popular Heineken advertisement on
    YouTube, titled “Heineken | Worlds Apart | #OpenYourWorld.”
    Heineken described the ad as, “Heineken presents ‘Worlds
    Apart’ An Experiment. Can two strangers with opposing

    6 Social Media + Society

    views prove that there’s more that unites than divides us?” In
    this ad, Heineken harnesses a social issue, political and social
    polarization, and the importance of a constructive conversa-
    tion across opinions and ideologies. This campaign received
    accolades from the advertising industry and popular press, as
    it was compared to a Pepsi campaign that drew on similar
    social themes but failed to resonate with social media audi-
    ences (Al-Sa’afin, 2017). The video was posted on April 24,
    2017, and attracted almost 15 million views by September
    30, 2017. This advertisement became viral via a range of
    platforms, including Twitter. The advertisement was selected
    for this study for its high degree of virality (AdAge.com,
    2017).

    Method

    Data

    We used the social media analytics and library platform
    Crimson Hexagon to capture all Tweets that included the
    URL to the YouTube video ad (https://www.youtube.com/
    watch?v=_yyDUOw-BlM). Crimson Hexagon is a Twitter
    Certified social media data analysis archive, and collects all
    publicly available tweets directly from the Twitter “fire-
    house.” The data collected for this study capture all public
    Twitter posts that used the hyperlink to the ad in question
    (including shortened hyperlinks). We captured all 18,942
    tweets posted by 13,009 users between April 20, 2017, when
    the video was posted, and September 20, 2017. We elected
    for a longer period of data collection time, due to the fact
    that viral advertising content often results in mainstream
    and trade media (Wallsten, 2010). Furthermore, the explor-
    atory nature of this study required a more inclusive data
    collection period to account for unexpected waves of
    engagement (see Figure 1).

    Note that the users @Youtube and @Heineken were
    removed from the network data analysis as these handles
    were automatically added to any tweet shared from YouTube,
    and therefore created artificial connections between all
    tweets, potentially misinforming the analysis.

    The Network

    A customized application was used to extract the retweets,
    mentions, and replies relationships from the list of tweets;
    the 5,765 retweets relationships; and the 7,212 mentions ties
    (including 392 replies, which serve the same function of
    appearing on a target user wall). The treatment of mentions
    and replies as a single link-type is a common practice in
    Twitter network analysis (Isa & Himelboim, 2018; Lee,
    Yoon, Smith, Park, & Park, 2017; Yep, Brown, Fagliarone, &
    Shulman, 2017). The MS Excel add-on network analysis
    application, NodeXL, was used to calculate user- and net-
    work-level analysis, as well as for visualization.

    For each user in the network, two types of centrality
    measurements were calculated, using NodeXL. In-degree
    centrality was measured as the number of connections initi-
    ated with a given actor (Wasserman & Faust, 1994). On
    Twitter, in-degree centrality is based on ties or relationships
    that others have initiated with a user (e.g., the number of
    users who have retweeted or mentioned that specific user).
    Users with the highest values in this metric can be consid-
    ered Hubs, highlighting users who have successfully gained
    attention to their messages. We determined the cutoff point
    for identifying hubs by plotting the distribution of in-degree
    by number of users and the drop point in the scree plot-like
    graph. Betweenness centrality measures the extent that the
    actor falls on the shortest path between other pairs of actors
    in the network (Wasserman & Faust, 1994). The more
    people depend on a user to make connections with other

    Figure 1. Twitter activity of posts including a hyperlink to the Heineken viral advertisement.

    https://www.youtube.com/watch?v=_yyDUOw-BlM

    https://www.youtube.com/watch?v=_yyDUOw-BlM

    Himelboim and Golan 7

    people, the higher that user’s betweenness centrality value
    becomes. This value is therefore associated with Bridges in
    a network.

    Findings

    The study identified a total of 13,009 users who posted a link
    to the original Heineken advertisement on YouTube. With
    almost 15 million views of this video on YouTube, this num-
    ber of tweets may appear low. However, each tweet posted
    by a user reaches all its Twitter followers. A message’s poten-
    tial reach or impressions are therefore calculated as the total
    number of Twitter walls, or user accounts, on which these
    tweets appeared. This metric is calculated by adding up all
    followers of all users who posted an original tweet with the
    advertisement URL and the followers of all users who
    retweeted such posts (Sterne, 2010). For the 13,009 users,
    the total reach was 48,962,936 users (the sum followers of all
    users in the network), meaning that for almost 50 million
    users, this advertisement appeared on their own Twitter
    pages. While it does not necessarily mean that the users all
    saw the ad, or even the link to it, and it does not take dupli-
    cates into account, the high reach value illustrates the poten-
    tial advertising distribution of the 13,009 tweets.

    Characteristics and Viral Advertising—Time

    The vast majority of advertising spread on Twitter (16,152
    tweets, 85.27%) were posted within the first 2½ weeks fol-
    lowing the date the video was posted (April 20, 2017—May
    6, 2017). The remaining posts were spread over the remain-
    ing 4.5 months of data collection. Notably, within the first
    5 days of the video’s publication, only 248 tweets linked to
    it. This relatively low-engagement period was followed by
    highly retweeted activity of individual users such as @Cait_
    Kahle, a consumer public relations professional, who
    tweeted on April 26, “Incredible perspective from @
    Heineken via an advertisement #OpenYourWorld: https://t
    .co/ApmYwteLwn.” This tweet gained 463 retweets. @
    CaseyNeistat, a photographer, posted on April 27, “y’all see
    that heineken commercial yet? it should win ALL ad
    awards—https://t.co/gFDXwy7F31,” gaining 1,172 retweets
    (see Figure 1).

    Characteristics of Viral Advertising—Distribution
    of Spread and Reach

    RQ1: What is the distribution structure of a viral adver-
    tisement on Twitter?

    The distribution histogram of tweets was found to be
    highly skewed. Of the 7,422 users who posted an original
    tweet with a link to the advertising video on YouTube, 5,875
    received no engagement from others (79.19% of original

    tweets and 45.16% of total tweets). These are isolated users
    in the network in terms of advertising spread. For 933 users,
    only one retweet occurred (i.e., two users spread); 214 users
    were retweeted by two users, 214 by three users, 75 by four,
    and 29 users had five retweets each. At the other end of this
    skewed distribution, a few single tweets were shared many
    times (1,154; 435; 336; 310; and 102 retweets for each of
    the top five most shared users). Figure 2 illustrates the
    distribution.

    RQ2: Which users serve as Hubs in a viral advertising
    network?

    The top users, those who posted the most retweeted tweets
    linking to the Heineken advertisement video, were primarily
    individuals with no affiliation to the brand: @CaseyNeistat
    (Casey Neistat), a videographer (1,214 retweets); Cait_Kahle
    (Caitlin Kahle), a consumer public relations professional
    (465 retweets); @ChrisRGun (The Cuntacular Chris), a user
    who posts political jokes and videos (99 retweets); @jrisco
    (Javier Risco), a Mexican journalist (96 retweets); @
    MaverickGamersX (Maverick Gamers), an aggregator for
    video game/film/entertainment industry news and reviews
    (88 retweets); @willwillynash (Will Nash), a director of
    short films and music videos (70 retweets); @anmintei, a
    professor at the University of Tokyo (53 retweets); @
    TheSeanODonnell (Sean O’Donnell), an actor and producer
    (49 retweets); @COPicard2017, a fan account for Jean-Luc
    Picard (42 retweets); and @rands, a vice president at Slack
    (42 retweets).

    Characteristics of Viral Advertising—The network

    RQ3: Which users serve as bridges in viral advertising
    networks?

    Social network analysis maps and examines patterns of
    spread of tweets across Twitter users. However, the network
    of retweets will create a set of disconnected silos, because

    Figure 2. The histogram of URL spread by Twitter users.
    Both axes are in logarithmic scales.

    https://t.co/ApmYwteLwn

    https://t.co/ApmYwteLwn

    https://t.co/gFDXwy7F31

    8 Social Media + Society

    any retweet of a post will be attributed to the original tweet.
    Understanding the network of social ties beyond retweets
    reveals the cross-silo interactions. We therefore expanded
    the dataset to include not only retweets but also mentions and
    replies within the set of 13,009 users who posted content
    with the ad’s URL.

    Figure 3 illustrates the social networks created when using
    only retweets as links. For illustration purposes, only clusters
    created by the most retweeted users were included. Each
    highlighted user is one of the top retweeted users, surrounded
    by users who retweeted their post’s link to Heineken’s adver-
    tisement on YouTube. Clearly, such a network does not pro-
    vide more information than was previously gained from
    identifying the top retweeted posts. The hubs were discussed
    in an earlier analysis. This figure highlights the limitation of
    examining retweets as the sole relationships in Twitter activity
    surrounding this viral advertisement.

    Adding mention relationships into the network adds
    another layer of connectivity. The retweeting clusters are no
    longer siloed and new clusters are formed. The top between-
    ness user added in this network is @Pepsi (in-degree = 352;
    betweenness centrality = 1,851,055.41).

    Examining the content that included @Pepsi reveals an
    important theme of the tweets helping to spread the Heineken
    ad: the controversial Pepsi advertisement criticized for cultural
    and racial insensitivities. In fact, 315 of the tweets mentioning
    @Pepsi and linking to the Heineken ad were not retweets and
    were not retweeted, and would have otherwise been potentially
    ignored, as they “failed” to attract retweets. The other cluster
    contained two additional bridges in the network: @Heineken_
    UK (in-degree = 181; betweenness centrality = 730,191.83) and
    @publicislondon, a London advertising agency (in-degree =
    63; betweenness = 740,877.09). These two users gained no

    meaningful retweets, and therefore did not reach the surface of
    the initial retweets analysis. However, they were highly men-
    tioned by users who posted links to the advertisement, contrib-
    uting to its virality. This finding highlights the potential
    significance of advertising agencies in the distribution of a viral
    ad on Twitter beyond their ability to inspire retweets. This anal-
    ysis points to the strategic application of the agencies’ Twitter
    networks as distribution mechanisms.

    Figure 4 illustrates the connectivity power of mentions,
    allowing for more in-depth understanding of the viral distri-
    bution process. Specifically, we can see the siloed clusters
    created by highly retweeted users, and the connections cre-
    ated by highly mentioned users.

    RQ4: What percentage do Low Influencers make of all
    users in the network?

    Of the total 13,009 users who shared a link to the Heineken
    advertisement, 5,875 (45.16%) were not retweeted even one
    time, making them isolated in the network. In other words,
    while each of these users did not make a major contribution
    to the virality of the ad, as a whole, through comprising
    almost half of the users, they did make a major contribution,
    thus supporting the idea of Low Influence users as important
    for viral advertising. The total potential reach of these Low
    Influence users, calculated as the sum of the number of their
    followers, is 9,091,133, 18.56% of the total potential reach
    (48,962,936) of all users in the network.

    Discussion

    The current study aims to advance social media virality
    and social media influencers in advertising scholarship by

    Figure 3. The retweets-based social network of Heineken’s viral advertisement.

    Himelboim and Golan 9

    incorporating a social networks approach. We propose and
    empirically identify three distinct types of social media
    influencers and thus highlight the multifaceted nature of dis-
    tribution in viral advertising. Using the Heineken’s Worlds
    Apart ad for proof of concept, we identified three types of
    key users, based on their network connectivity: Primary
    Influencers (retweeted hubs), Contextual Influencers
    (bridges), and Low Influencers (network isolates). As men-
    tioned, viral advertising largely depends on audience partici-
    pation in content distribution. Our analysis highlights the
    distinct role of each of the three influencers in ad distribu-
    tion. The current study aims to advance the understanding of
    the viral advertising process by offering a more macro-view
    of advertisements on Twitter. This view broadens the analy-
    sis of ad distribution beyond the single peer-to-peer flow,
    allowing for a multi-step structure available only through
    network analysis. Moving away from the question of what
    makes an advertising viral and toward the question of who
    makes an advertising viral, our study points to a highly
    skewed nature of distribution. The results of our analysis
    indicate that a small number of users disproportionately con-
    tributed to the distribution of the ad on Twitter, while the vast
    majority of users made a more modest contribution individ-
    ually, but a major contribution as a whole.

    The Skewed Distribution of Primary Influence

    One unique characteristic of viral advertising on Twitter is
    the multiple points of origin for an advertisement video.

    While the ad has a single source, often YouTube or the brand
    website, it starts a potential cascade of sharing on Twitter via
    multiple tweets. This study demonstrates the differential
    contribution of individual Twitter accounts, either affiliated
    or not affiliated with a brand. Consistent with previous scho-
    larship on viral advertising (Petrescu, 2014; Phelps et al.,
    2004) and information sharing on Twitter (Araujo et al.,
    2017), we found that a small number of users had more influ-
    ence on content distribution than most. Scholarship often
    points to celebrities, elites, and media organizations as key
    influencers due to their large Twitter following (Himelboim
    et al., 2014; Jin & Phua, 2014). The current study points to a
    more nuanced explanation.

    Taking a social networks approach, the structure of inter-
    actions created by acts of sharing only (i.e., retweets) fails to
    explain the overall structure of information flow in the net-
    work in two main ways. First, the major clusters of retweets
    remain isolated. Such a siloed structure cannot explain the
    virality of advertising beyond a set of a few highly shared
    tweets. Second, the approach ignores the majority of users
    who made much more moderate contributions to the virality
    of the ad, as they received little or no retweets.

    Bridges: The Contextual Influencers

    Viral advertising does not take place in vacuum and content
    sharing takes place in a broader conversational context.
    A second type of social media influencers—Contextual
    Influencers—are those who conceptualize and operationalize

    Figure 4. The retweets and mentioned-based social network of Heineken’s viral advertisement.

    10 Social Media + Society

    as users who do not necessarily take an active part in the con-
    versation but are brought into the chatter by users who men-
    tioned them, as they contribute to advertising virality by
    sharing a link to an ad. Social media influencers are often
    characterized by the amount of social connections they have,
    in terms of followers or subscribers (Abidin, 2016). Contextual
    influencers are defined by Twitter mentions, a unique type of
    parasocial relationship that captures best the idea of a sense of
    engagement of audience members with on-screen characters
    (Tukachinsky, 2010).

    Building upon literature about Bridges and structural
    holes, highly mentioned users play a role by symbolically
    connecting many users who were not retweeted, based on
    parasocial relationships that they form in the network. In
    other words, introducing both a new type of ties, mentions of
    users as links, and an additional node-level structural net-
    work position, a bridge provides context for understanding
    certain mechanisms in the distribution of viral advertising
    that have been ignored by recent scholarship, which has
    focused solely on highly retweeted users.

    Contextual influencers, in the mention-based clusters of
    low engagement users, provide the context and a possible
    explanation for the advertisement’s virality. In the case study,
    a common reason for posting the video was in comparison
    with a failed competing campaign (Pepsi) and in the context
    of the advertising agency behind that campaign, Publicis
    London (Publicis, 2017). As one may recall, both Pepsi and
    Heineken launched campaigns aiming to gain advertising
    distribution through the production of socially provocative
    advertisements. While Pepsi was often criticized for its cam-
    paign, Heineken was praised. Even though Pepsi did not take
    an active part in distributing the Heineken ad, as it never
    posted a link to it, Pepsi is an influencer in the network
    because it influenced the virality of the Heineken ad. It is the
    comparison between the two campaigns that people posted
    about, when they distributed the Heineken ad link.

    Further analysis of patterns of mentions among users in
    examples of viral advertising spread on Twitter can provide
    researchers and practitioners with an understanding of the
    triggers of distributing advertising content on Twitter. In
    other words, this proposed methodology shifts the focus
    from aiming to explain the reason for high levels of
    retweets, to explaining the reasons for high level of posts,
    even if these posts received no engagement. It should be
    noted that while @HeinekenUK appeared together in a
    cluster with @PublicisLondon, it had limited influence net-
    work connectivity.

    Isolates: The Influence of the Low Influence Users

    Expanding the breadth of the network to include mentions
    as network links also revealed clusters of users who contrib-
    uted to the virality of the advertisement but in a more hidden
    manner, as they did not attract many retweets. However,
    these users vastly contributed to the reach of the ad on

    Twitter as whole. In the Heineken case, almost four of five
    original tweets posted with the Heineken video were not
    retweeted, representing about 45% of all tweets in our data-
    set. At face value, the contribution from each of these users
    seems minimal. However, when aggregated, we find that
    these seemingly non-successful content distributors played
    an important role in the overall distribution of the advertise-
    ment. Furthermore, the video appeared on the walls of all of
    their followers, even if they were not retweeted, expanding
    their contribution to the virality even further. In the Heineken
    case, they accounted for almost a fifth of the total potential
    reach. Considering Nielsen’s (2006) idea of the 1-9-90 rule,
    findings suggest that within the majority of seemly non-
    influential users, many have limited influence on advertis-
    ing distribution. But when aggregated, these users make a
    major impact on advertising virality.

    There is no doubt that influencer analysis is an important
    factor in understanding viral distribution of Internet content.
    As made evident by previous studies, not all Twitter users are
    equal in their ability to promote content, with elites, corpora-
    tions, and celebrities often leading the discussion. The results
    of our analysis point to an often-overlooked phenomenon, the
    influence of non-influencers, a phenomenon that occurs when
    individuals fail to meaningfully contribute to the structure of
    a network, but play an important role in shaping the network
    when grouped with other non-influencers, ultimately making
    a meaningful contribution to viral advertising.

    Conclusions and Limitations

    Recognizing the potential of the network approach in
    informing and advancing research on viral advertising, our
    study demonstrated the multi-level ad distribution process.
    Whereas most previous studies focused on what may lead to
    advertisement virality (Chu, 2011; Golan & Zaidner, 2008;
    Hayes & King, 2014), our study addresses another impor-
    tant question: who makes advertising viral? We identified
    three key types of influencers. The first are the highly
    retweeted users in the network, each individually makes a
    major contribution to the distribution of ads. The second are
    highly mentioned users who make a crucial yet passive con-
    tribution to content virality. These serve as Bridges, filling
    structural holes left in the retweets-only networks. Third are
    Low Influencers, who each introduced the ad to Twitter by
    posting an original tweet with a link. Individually their con-
    tribution to ad virality does not go beyond their group of
    followers; however, their aggregated influence on virality is
    vast, making them influential in the network.

    Finally, the current study advances the methodological
    approach to the study of viral advertising. Network analysis
    is the only method that allows for a meaningful representa-
    tion of the viral advertising distribution process. The defini-
    tion of an advertisement as a single paid form of media
    requires a third approach where data are collected based
    on a single piece of content, namely, a hyperlink to an

    Himelboim and Golan 11

    advertisement. Collecting Twitter data based on a single
    URL results in a dataset that captures the spread of a single
    ad across a range of distributors, as opposed to the traditional
    data collection strategy based on a set of keywords capturing
    a conversation about a brand. We argue this strategy is not
    only unique to viral advertisement, but is the most appropri-
    ate strategy overall. These conceptual and methodological
    contributions are applicable beyond the study of viral adver-
    tising and the field of marketing, as social media influencers
    play a key function of content distribution on online plat-
    forms with implications for scholars and practitioners alike
    across discipline.

    The proposed conceptual framework had the key limita-
    tion of testing only a single dataset. Future studies should
    apply this network approach across viral advertising cam-
    paigns and across a range of brands. Similarities and differ-
    ences in the two types of influential users proposed here
    could lead to better understanding of the nature of viral
    advertising on social media. In the same vein, our analysis of
    the Pepsi account as a key bridge evidenced the potential
    contribution of non-affiliated accounts to the overall viral
    network. Our study did not examine other key users, and thus
    did not account for their potential influence. Furthermore,
    any study about engagement is susceptible to a bias made by
    fake engagement, an ongoing issue for researchers and prac-
    titioners (Pathak, 2017).

    The current study is also limited by its use of a single case
    study on a single social media platform. Social media con-
    tent is almost never distributed via a single platform alone,
    but rather becomes viral through the integration and distribu-
    tion of content across platforms as individuals share links to
    content in multiple ways. We recognize this issue as a limita-
    tion of our study and call upon future studies to consider this
    consideration in their design.

    Declaration of Conflicting Interests

    The author(s) declared no potential conflicts of interest with respect
    to the research, authorship, and/or publication of this article.

    Funding

    The author(s) received no financial support for the research, author-
    ship, and/or publication of this article.

    ORCID iD

    Itai Himelboim https://orcid.org/0000-0001-7981-5613

    References

    Abidin, C. (2016). “Aren’t these just young, rich women doing
    vain things online?”: Influencer selfies as subversive frivolity.
    Social Media+ Society, 2(2), 2056305116641342.

    AdAge.com. (2017). Heineken’s “social experiment” racks up
    views. Retrieved from http://adage.com/article/the-viral-video
    -chart/viral-video-chart-5-1-17/308885/

    Alhabash, S., Baek, J. H., Cunningham, C., & Hagerstrom, A.
    (2015). To comment or not to comment? How virality, arousal

    level, and commenting behavior on YouTube videos affect
    civic behavioral intentions. Computers in Human Behavior,
    51, 520–531.

    Alhabash, S., & McAlister, A. R. (2015). Redefining virality in
    less broad strokes: Predicting viral behavioral intentions from
    motivations and uses of Facebook and Twitter. New Media &
    Society, 17, 1317–1339.

    Alhabash, S., McAlister, A. R., Hagerstrom, A., Quilliam, E. T.,
    Rifon, N. J., & Richards, J. I. (2013). Between likes and shares:
    Effects of emotional appeal and virality on the persuasiveness
    of anticyberbullying messages on Facebook. Cyberpsychology,
    Behavior, and Social Networking, 16, 175–182.

    Al-Sa’afin, A. (2017). Heineken create the anti-Pepsi advert.
    Newshub.co.nz. Retrieved from http://www.newshub.co.nz
    /home/entertainment/2017/04/heineken-create-the-anti-pepsi
    -advert-aziz-al-sa-afin.html

    Araujo, T., Neijens, P., & Vliegenthart, R. (2017). Getting the word
    out on Twitter: The role of influentials, information brokers and
    strong ties in building word-of-mouth for brands. International
    Journal of Advertising, 36, 496–513.

    Audrezet, A., De Kerviler, G., & Moulard, J. G. (2018). Authenticity
    under threat: When social media influencers need to go beyond
    self-presentation. Journal of Business Research. Advance
    online publication. doi:10.1016/j.jbusres.2018.07.008

    Bakshy, E., Hofman, J. M., Mason, W. A., & Watts, D. J. (2011,
    February 9-12). Everyone’s an influencer: Quantifying influ-
    ence on Twitter. In Proceedings of the fourth ACM interna-
    tional conference on web search and data mining (pp. 65–74).
    New York, NY: ACM.

    Baños, R. A., Borge-Holthoefer, J., & Moreno, Y. (2013). The role
    of hidden influentials in the diffusion of online information
    cascades. EPJ Data Science, 2, 6.

    Brown, M. R., Bhadury, R. K., & Pope, N. K. L. (2010). The impact
    of comedic violence on viral advertising effectiveness. Journal
    of Advertising, 39, 49–66.

    Brown, D. & Hayes, N. (2008). Influencer Marketing: Who Really
    Influences Your Customers? Taylor & Francis.

    Burt, R. S. (1992). Structural holes: The social structure of com-
    petition. Cambridge, MA: Harvard University Press.

    Burt, R. S. (2001). Social capital: Theory and research
    (N. L. Karen, S. Cook, & R. S. Burt, Eds.). New York, NY:
    Aldine de Gruyter.

    Burt, R. S. (2005). Brokerage and closure: An introduction to
    social capital. Oxford, UK: Oxford University Press.

    Cha, M., Haddadi, H., Benevenuto, F., & Gummadi, K. P. (2010).
    Measuring user influence in Twitter: The million follower fal-
    lacy. Paper presented at Proceedings of the fourth international
    AAAI Conference on Weblogs and Social Media. Retrieved
    from http://twitter.mpi-sws.org/icwsm2010_fallacy

    Cho, S., Huh, J., & Faber, R. J. (2014). The influence of sender trust
    and advertiser trust on multistage effects of viral advertising.
    Journal of Advertising, 43, 100–114.

    Chu, S. C. (2011). Viral advertising in social media: Participation
    in Facebook groups and responses among college-aged users.
    Journal of Interactive Advertising, 12, 30–43.

    Daniel, E. S., Crawford, J. E. C., & Westerman, D. K. (2018). The
    influence of social media influencers: Understanding online
    vaping communities and parasocial interaction through the lens
    of Taylor’s six-segment strategy wheel. Journal of Interactive
    Advertising, 18, 96–109.

    https://orcid.org/0000-0001-7981-5613

    http://adage.com/article/the-viral-video-chart/viral-video-chart-5-1-17/308885/

    http://adage.com/article/the-viral-video-chart/viral-video-chart-5-1-17/308885/

    http://www.newshub.co.nz/home/entertainment/2017/04/heineken-create-the-anti-pepsi-advert-aziz-al-sa-afin.html

    http://www.newshub.co.nz/home/entertainment/2017/04/heineken-create-the-anti-pepsi-advert-aziz-al-sa-afin.html

    http://www.newshub.co.nz/home/entertainment/2017/04/heineken-create-the-anti-pepsi-advert-aziz-al-sa-afin.html

    http://twitter.mpi-sws.org/icwsm2010_fallacy

    12 Social Media + Society

    De Veirman, M., Cauberghe, V., & Hudders, L. (2017). Marketing
    through Instagram influencers: The impact of number of fol-
    lowers and product divergence on brand attitude. International
    Journal of Advertising, 36, 798–828.

    Evans, N. J., Phua, J., Lim, J., & Jun, H. (2017). Disclosing
    Instagram influencer advertising: The effects of disclosure
    language on advertising recognition, attitudes, and behavioral
    intent. Journal of Interactive Advertising, 17, 138–149.

    Eckler, P., & Bolls, P. (2011). Spreading the virus: Emotional tone
    of viral advertising and its effect on forwarding intentions and
    attitudes. Journal of Interactive Advertising, 11(2), 1–11.

    Freberg, K., Graham, K., McGaughey, K., & Freberg, L. A. (2011).
    Who are the social media influencers? A study of public per-
    ceptions of personality. Public Relations Review, 37, 90–92.

    Goel, S., Anderson, A., Hofman, J., & Watts, D. J. (2015). The
    structural virality of online diffusion. Management Science, 62,
    180–196.

    Golan, G. J., & Zaidner, L. (2008). Creative strategies in viral adver-
    tising: An application of Taylor’s six-segment message strat-
    egy wheel. Journal of Computer-Mediated Communication,
    13, 959–972.

    Goldenberg, J., Libai, B., & Muller, E. (2001). Talk of the network:
    A complex systems look at the underlying process of word-of
    mouth. Marketing Letters, 12, 211–223.

    Hansen, D. L., Shneiderman, B., & Smith, M. A. (2011). Analyzing
    social media networks with NodeXL: Insights from a connected
    world. Burlington, MA: Morgan Kaufmann.

    Hayes, J. L., & King, K. W. (2014). The social exchange of viral
    ads: Referral and coreferral of ads among college students.
    Journal of Interactive Advertising, 14, 98–109.

    Hayes, J. L., King, K. W., & Ramirez, A. (2016). Brands, friends,
    & viral advertising: A social exchange perspective on the ad
    referral processes. Journal of Interactive Marketing, 36, 31–45.

    Hayes, N. (2008). Influencer Marketing: Who Really Influences
    Your Customers? Taylor & Francis.

    Hemsley, J. (2016). Studying the viral growth of a connective action
    network using information event signatures. First Monday,
    21(8). Retrieved from https://firstmonday.org/ojs/index.php/
    fm/article/view/6650/5598

    Himelboim, I., Golan, G. J., Moon, B. B., & Suto, R. J. (2014). A
    social networks approach to public relations on Twitter: Social
    mediators and mediated public relations. Journal of Public
    Relations Research, 26, 359–379.

    Hinz, O., Skiera, B., Barrot, C., & Becker, J. U. (2011). Seeding
    strategies for viral marketing: An empirical comparison.
    Journal of Marketing, 75, 55–71.

    Horton, D., & Wohl, R. (1956). Mass communication and para-
    social interaction: Observations on intimacy at a distance.
    Psychiatry, 19, 215–229.

    Hsieh, J. K., Hsieh, Y. C., & Tang, Y. C. (2012). Exploring the
    disseminating behaviors of eWOM marketing: Persuasion in
    online video. Electronic Commerce Research, 12, 201–224.

    Huang, J., Su, S., Zhou, L., & Liu, X. (2013). Attitude toward
    the viral ad: Expanding traditional advertising models to
    interactive advertising. Journal of Interactive Marketing, 27,
    36–46.

    Isa, D., & Himelboim, I. (2018). A social networks approach to
    online social movements: Social mediators and mediated con-
    tent in #FreeAJStaff Twitter network. Social Media + Society,
    4(1), 2056305118760807.

    Jin, S. A. A., & Phua, J. (2014). Following celebrities’ tweets about
    brands: The impact of twitter-based electronic word-of-mouth
    on consumers’ source credibility perception, buying intention,
    and social identification with celebrities. Journal of Advertising,
    43(2), 181–195.

    Kaplan, A. M., & Haenlein, M. (2011). Two hearts in three-quarter
    time: How to waltz the social media/viral marketing dance.
    Business Horizons, 54, 253–263.

    Keller, K. L. (2009). Building strong brands in a modern mar-
    keting communications environment. Journal of Marketing
    Communications, 15, 139–155.

    Ketelaar, P. E., Janssen, L., Vergeer, M., van Reijmersdal, E. A.,
    Crutzen, R., & van’t Riet, J. (2016). The success of viral ads:
    Social and attitudinal predictors of consumer pass-on behav-
    ior on social network sites. Journal of Business Research, 69,
    2603–2613.

    Klimmt, C., Hartmann, T., & Schramm, H. (2006). Parasocial inter-
    actions and relationships. In J. Bryant & P. Vorderer (Eds.),
    Psychology of entertainment (pp. 291–313). Mahwah, NJ:
    Lawrence Erlbaum.

    Kwak, H., Lee, C., Park, H., & Moon, S. (2010). What is Twitter, a
    social network or a news media? Paper presented at Proceedings
    of the 19th International Conference on World Wide Web.
    Retrieved from https://dl.acm.org/citation.cfm?id=1772751

    Lee, M. K., Yoon, H. Y., Smith, M., Park, H. J., & Park, H. W.
    (2017). Mapping a Twitter scholarly communication network:
    A case of the association of internet researchers’ conference.
    Scientometrics, 112, 767–797.

    Lou, C., & Yuan, S. (2018). Influencer marketing: How message
    value and credibility affect consumer trust of branded con-
    tent on social media. Journal of Interactive Advertising, 19,
    58–73.

    Miles, C. (2014). The rhetoric of managed contagion: Metaphor and
    agency in the discourse of viral marketing. Marketing Theory,
    14, 3–18.

    Newman, M. (2000). The power of design. Nature, 405, 412–413.
    Nielsen, J. (2006). Participation inequality: Encouraging more

    users to contribute. Retrieved from http://www.useit.com
    /alertbox/participation_inequality.html

    Okazaki, S., Katsukura, A., & Nishiyama, M. (2007). How mobile
    advertising works: The role of trust in improving attitudes and
    recall. Journal of Advertising Research, 47, 165–178.

    Pathak, S. (2017, August 10). Report: Brands are falling for
    fake Instagram influencers. Digiday.com. Retrieved from
    https://digiday.com/marketing/report-brands-falling-fake
    -instagram-influencers/

    Pearson, B. (2016). Storytizing: What’s next after advertising.
    Austin, TX: 1845 Publishing.

    Pei, S., Muchnik, L., Andrade, J. S., Jr., Zheng, Z., & Makse, H.
    A. (2014). Searching for superspreaders of information in real-
    world social media. Scientific Reports, 4, 5547.

    Petrescu, M. (2014). Viral marketing and social networks. New
    York, NY: Business Expert Press.

    Petrescu, M., & Korgaonkar, P. (2011). Viral advertising: Definitional
    review and synthesis. Journal of Internet Commerce, 10,
    208–226.

    Phelps, J. E., Lewis, R., Mobilio, L., Perry, D., & Raman, N.
    (2004). Viral marketing or electronic word-of-mouth advertis-
    ing: Examining consumer responses and motivations to pass
    along email. Journal of Advertising Research, 44, 333–348.

    https://firstmonday.org/ojs/index.php/fm/article/view/6650/5598

    https://firstmonday.org/ojs/index.php/fm/article/view/6650/5598

    https://dl.acm.org/citation.cfm?id=1772751

    http://www.useit.com/alertbox/participation_inequality.html

    http://www.useit.com/alertbox/participation_inequality.html

    https://digiday.com/marketing/report-brands-falling-fake-instagram-influencers/

    https://digiday.com/marketing/report-brands-falling-fake-instagram-influencers/

    Himelboim and Golan 13

    Phua, J., & Kim, J. J. (2018). Starring in your own Snapchat adver-
    tisement: Influence of self-brand congruity, self-referencing
    and perceived humor on brand attitude and purchase intention
    of advertised brands. Telematics and Informatics, 35, 1524–
    1533.

    Phua, J., Jin, S. V., & Kim, J. J. (2017). Gratifications of using
    Facebook, Twitter, Instagram, or Snapchat to follow brands: The
    moderating effect of social comparison, trust, tie strength, and
    network homophily on brand identification, brand engagement,
    brand commitment, and membership intention. Telematics and
    Informatics, 34(1), 412–424.

    Porter, L., & Golan, G. J. (2006). From subservient chickens to
    brawny men: A comparison of viral advertising to television
    advertising. Journal of Interactive Advertising, 6, 30–38.

    Publicis. (2017, April 21). Heineken® unveils social experiment for
    new Open Your World campaign. Retrieved from https://publicis
    .london/news/heineken-unveils-social-experiment-for-new
    -open-your-world-campaign/

    Rasmussen, L. (2018). Parasocial interaction in the Digital Age: An
    examination of relationship building and the effectiveness of
    YouTube celebrities. The Journal of Social Media in Society,
    7, 280–294.

    Scott, D. M. (2015). The new rules of marketing and PR: How to
    use social media, online video, mobile applications, blogs,
    news releases, and viral marketing to reach buyers directly.
    Hoboken, NJ: John Wiley & Sons.

    Senft, T. M. (2008). Camgirls: Celebrity and Community in the Age of
    Social Networks (Vol. 4). New York: Peter Lang.

    Shan, Y., & King, K. W. (2015). The effects of interpersonal tie strength
    and subjective norms on consumers’ brand-related eWOM refer-
    ral intentions. Journal of Interactive Advertising, 15, 16–27.

    Sterne, J. (2010). Social media metrics: How to measure and optimize
    your marketing investment. Hoboken, NJ: John Wiley & Sons.

    Tsai, W. H. S., & Men, L. R. (2017). Social CEOs: The effects
    of CEOs’ communication styles and parasocial interaction
    on social networking sites. New Media & Society, 19, 1848–
    1867.

    Tsiotsou, R. H. (2015). The role of social and parasocial relation-
    ships on social networking sites loyalty. Computers in Human
    Behavior, 48, 401–414.

    Tukachinsky, R. (2010). Para-romantic love and para- friendships:
    Development and assessment of a Multiple Parasocial
    Relationships Scale. American Journal of Media Psychology,
    3, 73–94.

    Wallsten, K. (2010). “Yes we can”: How online viewership, blog
    discussion, campaign statements, and mainstream media
    coverage produced a viral video phenomenon. Journal of
    Information Technology & Politics, 7, 163–181.

    Wasserman, S., & Faust, K. (1994). Social network analysis:
    Methods and applications. New York, NY: Cambridge
    University Press.

    Watts, D. J., & Dodds, P. S. (2007). Influentials, networks, and
    public opinion formation. Journal of Consumer Research, 34,
    441–458.

    Wells, W., Moriarty, S., & Burnett, J. (2000). Advertising Principles
    and Practice. Upper Saddle River, NJ: Prentice Hall.

    Yep, J., Brown, M., Fagliarone, G., & Shulman, J. (2017). Influential
    players in Twitter networks of libraries at primarily undergraduate
    institutions. The Journal of Academic Librarianship, 43, 193–200.

    Author Biographies

    Itai Himelboim (PhD, University of Minnesota) is an associate pro-
    fessor of Advertising and Public Relations and the director of the
    SEE Suite, the social media engagement and evaluation lab, at
    Grady College of Journalism and Mass Communication, of the
    University of Georgia. His research interests include social media
    analytics and network analysis of large social media activity related
    to advertising, health, and politics.

    Guy J. Golan (PhD, University of Florida) is the director of the
    Center for Media & Public Opinion. He has published more than 40
    peer-reviewed journal articles focused on media effect, political
    communication, and strategic communication.

    https://publicis.london/news/heineken-unveils-social-experiment-for-new-open-your-world-campaign/

    https://publicis.london/news/heineken-unveils-social-experiment-for-new-open-your-world-campaign/

    https://publicis.london/news/heineken-unveils-social-experiment-for-new-open-your-world-campaign/

    Order your essay today and save 25% with the discount code: STUDYSAVE

    Order a unique copy of this paper

    600 words
    We'll send you the first draft for approval by September 11, 2018 at 10:52 AM
    Total price:
    $26
    Top Academic Writers Ready to Help
    with Your Research Proposal

    Order your essay today and save 25% with the discount code GREEN