Behavioral Economics in Information Systems Research:
A Persuasion Context Analysis
Michael Oduor and Harri Oinas-Kukkonen
Oulu Advanced Research on Services and Information Systems,
Faculty of Information Technology and Electrical Engineering, University of Oulu, P.O. Box 8000, 90014 Oulu, Finland
Keywords: Behavioral Economics, Information Systems, Persuasive Systems Design.
Abstract: In recent years, there has been growth in information systems (IS) research applying psychological theories
focusing on peoples’ perception towards use of technology and how technology can motivate positive
change. Behavioral economics–grounded in cognitive and psychological principles–on the other hand
studies irrationalities in peoples’ behavior from an economics perspective and is a field that has lately been
starting to gain credence in IS literature. This study’s aim is to establish the depth of behavioral economics
studies in IS research by reviewing the basket of eight journals using the persuasive systems design model
as an analytical tool. From this extant literature, similarities and complementary properties with other
disciplines can be integrated, and improved methods of understanding users and their actions can be used
for better prevention and intervention techniques especially in the domains of health IS and sustainability or
Green IS.
1 INTRODUCTION
To economists and management scientists,
consumers want to maximize utility and if they are
presented with clear and simple choices that they
understand, they will do so. Whereas to behavioral
scientists, the real world is so complicated that the
theory of utility maximization has little relevance to
real choices and even in relatively simple situations,
people do not behave in the way predicted by direct
application of the utility theory (Simon 1959). This
stream of research formed the beginnings of
behavioral decision research. The 1970s heralded the
emergence of behavioral economics with works
from (Tversky and Kahneman, 1974) and
(Kahneman and Tversky, 1979) prospect theory
dealing with decision-making under risk and how
differences in formulating a choice of problems
cause significant changes in people’s preferences.
For more details on the emergence of behavioral
economics see (Angner and Loewenstein, 2007), for
example.
Behavioral economics examines conditions that
influence the consumption of commodities and
combines psychology and economics to investigate
how individuals actually behave as opposed to how
they behave if they were being perfectly rational (as
in the sense of maximizing their utility) (Prince et al.
2013; Thorgeirsson and Kawachi 2013). Behavioral
economics is organized around experimental
findings that suggest inadequacies of standard
economic theory and is focused on individual
choice, the motives underlying that choice and also
knowing more about a subject’s situation at the time
of making a choice (Pesendorfer 2006).
The present study focuses on analyzing
behavioral economics in information systems (IS)
research by utilizing persuasion context analysis as
described in (Oinas-Kukkonen and Harjumaa, 2009).
Applying behavioral economics in studying
technology use and adoption provides a potential
strategy for better understanding users and the
factors that lead to the non-adoption or intended use
of IS. Behavioral economic principles can also aid in
developing techniques for improved presentation,
delivery, and organization of information or
services. Therefore, behavioral economics methods
have enormous potential to inform and complement
information systems (IS) research and as noted in
Goes (2013) there has not been extensive research in
the IS field utilizing behavioral economics methods.
The objective of the present review is, thus, to
examine by applying context analysis (Oinas-
Kukkonen and Harjumaa, 2009), behavioral
economics research in IS that address how cognitive
Oduor, M. and Oinas-kukkonen, H.
Behavioral Economics in Information Systems Research: A Persuasion Context Analysis.
DOI: 10.5220/0006277700170028
In Proceedings of the 19th International Conference on Enterprise Information Systems (ICEIS 2017) - Volume 3, pages 17-28
ISBN: 978-989-758-249-3
Copyright © 2017 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
17
limitations influence decision-making. The rest of
the paper is structured as follows: the following
section introduces the theoretical background on
behavioral economics and persuasive systems
design. Section 3 describes the review process,
which is followed by the results. The paper then
concludes with a discussion summarizing the results,
limitations, directions for future work, and
conclusions.
2 THEORETICAL
BACKGROUND
2.1 Persuasive Systems Design
Computers were initially created to perform simple
tasks like calculating, storing and data retrieval, but
they have now adopted increasingly persuasive roles
as they have shifted to our everyday lives (Fogg,
2003). Computers are now viewed as interactive
persuasive systems that motivate and influence users
and can facilitate behavior change (Fogg, 2003;
Oinas-Kukkonen and Harjumaa, 2009).
The aim of persuasive communication is to
voluntarily change one’s attitude and/or behavior
without deception or coercion. The PSD model
presents seven postulates to be taken into account
when developing persuasive systems. These
postulates address accessibility and reach, ease of
use, making and enforcing of commitments,
attitudes and persuasion strategies, sequential nature
of persuasion, the ideal moments for initiating
persuasive features and openness (Oinas-Kukkonen
and Harjumaa, 2009).
Inherent in these postulates are social
psychological theories on attitude change, influence,
learning and among others that help to explain
human behavior in different circumstances.
Examples of such theories include the theory of
planned behavior (TPB) (Ajzen 1991), which
explains how an individual’s attitude and subjective
norms about a behavior is determined by behavioral
intentions and perception with which the behavior
can be performed. The elaboration likelihood model
(ELM) (Petty and Cacioppo 1986) a theory of
attitude change that describes direct and indirect
routes to information processing and persuasion.
Bandura's (1989) social learning and social cognitive
theories which provide a framework for
understanding, predicting and changing human
behavior. According to theories, people learn new
behaviors by studying, observing and then
replicating the actions of others. Lastly, Cialdini’s
(2007) studies on influence which show how
formulating requests in certain ways can trigger
automatic compliance response from individuals.
Following the postulates, the context for
persuasion is considered. The persuasion context
analysis comprises of recognizing the intent, the
event, and the strategy (Oinas-Kukkonen &
Harjumaa, 2009). The intent includes the initiator for
the development of a system and its purpose. The
event consists of the context of use, the user, and the
technology. The use context refers to characteristics
of the problem domain in question, the user context
includes the differences and characteristics among
users, and the technology context refers to the type
or technical specifications of a system. Finally, the
strategy addresses the analysis of persuasive
message being conveyed and the route, whether
direct or indirect or both (Petty and Cacioppo,
1986), that is used to influence the user (Oinas-
Kukkonen and Harjumaa, 2009).
In most studies on persuasive systems and
success factors for IS, the context and the effect it
can have on a user’s decision-making is rarely
addressed. Success is also usually measured in terms
of changing users’ behaviors in ways predetermined
by developers or providers of the system
(Brynjarsdottir et al. 2012). In persuasive
technology, information is usually provided for
people to better understand either certain problems.
However, there has been research that point to
potential disadvantages of using information-centric
approaches to motivate behavior (Lee et al., 2011).
The emphasis on providing information rests on the
assumption that people are rational actors striving to
enhance activity based on what they know and the
information that is available (Brynjarsdottir et al.,
2012). But, people have been shown to be
predictably irrational with such behavior being
neither random nor senseless. They are systematic,
and since we repeat them again and again,
predictable” (Ariely 2008).
2.2 Behavioral Economics
Behavioral economics departs from the standard
economic model in acknowledging three human
behavioral traits: 1) bounded rationality – human
beings have limited information processing
capabilities and because of this, they adopt rules of
thumb to aid in problem-solving. 2) Bounded
willpower – accounts for the fact that people do not
always make choices that are in their best long-term
interest, due to a lack of self-control, and 3) bounded
selfishness – relaxes the assumption that people are
motivated by pure self-interest and their actions also
ICEIS 2017 - 19th International Conference on Enterprise Information Systems
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include altruistic and spiteful behaviors
(Thorgeirsson & Kawachi, 2013). Within these three
behavioral traits, there are psychological principles
that explain why people act in certain ways. For
example, one’s estimates and judgments being
biased towards some initial anchor value, preference
of the status quo as opposed to changing routines,
interventions that help participants pre-commit to
future healthy behavior and so forth (Thaler &
Sunstein 2008; Thorgeirsson & Kawachi 2013).
Most behavioral economics research mainly
focuses on interventions for healthier living (Prince
et al. 2013; Michie & Williams 2003), strategies for
reducing unwanted behaviors (Lunze & Paasche-
Orlow 2013), environmental sustainability and
improving governmental and institutional policies
that benefit society (Siva 2010; Avineri 2012).
Prince et al. (2013), for example, propose
improvements to better understand the role of
protective behavioral strategies in reducing the use
of alcohol, explain why there have been
inconsistencies in previous studies, and what can be
done to enhance future studies. Michie and Williams
(2003) discuss the factors that lead to work-related
psychological ill health, comparing between
different professions and proposing solutions to
these problems mainly involving training and more
involvement in decision making.
Siva (2010) applies lessons in behavioral
economics to improve pay-for-performance
programs. The reasons why such programs are
flawed and how people respond to incentives are
addressed in the article. Lunze and Paasche-Orlow
(2013) discuss the pros and cons and ethical
concerns on the use of incentives in behavioral
economics to promote healthy behavior and reduce
health costs. Lunze & Paasche-Orlow (2013),
acknowledge the need for safeguards in the
programs to monitor their associated risks and
promoting fairness in offering the incentives for
them to be beneficial. Avineri (2012), links travel
behavior to psychological theories and shows how
individuals’ choices in different contexts deviate
from the predictions of rational behavior.
As the role of information technology (IT) in
people’s daily decision-making and experiences has
increased, new opportunities to assist people in
making self-beneficial choices have arisen (Lee et
al. 2011). The persuasive element in behavioral
economics lies in the presentation of choices in a
way that leverages people’s decision processes; thus,
encouraging them to make self-beneficial choices
(Lee et al. 2011). For example, Crowley et al. (2011)
apply behavioral economics in developing sensor-
based interactive systems to initiate change in
residential energy consumption. They argue that
even though the success of most of the sensor-based
power meters and other related residential
monitoring devices depends on users responding to
the data they generate with appropriate changes in
their consumption behavior, most of these devices
have not been developed with the end-user in mind.
Therefore, a more human-centered process that
integrates behavioral insights to determine the
effectiveness of sensor-based interactive systems
and of interfaces based on cognitive, social and
affective frames is proposed (Crowley et al. 2011).
3 REVIEW PROCESS
A structured literature review is a focused approach
to identify relevant articles. Structured reviews
provide means to identify and categorize most of the
existing literature concerned with the research
question(s). The reasons for conducting a review
include, but are not limited to summarizing the
existing facts about use of technology, creating a
firm foundation for advancing knowledge,
identifying gaps in current works in order to suggest
areas for further analysis, and providing a
framework for suitably positioning research interests
(Webster and Watson 2002; Kitchenham 2004). Our
objective, is to use the PSD model (Oinas-Kukkonen
and Harjumaa 2009) to examine behavioral
economics research in IS. This would enable us to
identify any recurring and emerging themes and
identify gaps in the literature.
3.1 Need for a Review of Behavioral
Economics in IS
Webster and Watson (2002) state that a literature
review process stems from scholars need to report
progress in a particular stream of research and from
those who have completed a review prior to starting
a project and have developed theoretical models
from the review. Additionally, there are reviews on
mature topics and those on emerging issues that
would benefit from exposure to new theoretical
foundations (Webster and Watson 2002). Behavioral
economics has lately been gaining attention in the IS
field, and although it is a relatively new field, it has
been widely studied in economics and mostly health
and environmental conservation-related topics.
Vassileva (2012), in her overview of the growth of
web-based social applications and the approaches
they use to motivate user participation, states that
most of these applications employ simple
Behavioral Economics in Information Systems Research: A Persuasion Context Analysis
19
approaches that have been successful in engaging
users. Although, these approaches only ensure that
users act accordingly, but are unable to guide the
social system(s) towards a desirable overall
behavior. For this reason, several future trends
related to the application of social psychology,
behavioral economics and their convergence with
other disciplines are suggested in the design of
reward and incentive mechanisms for particular
types of communities, persuasive and other user-
adaptive systems (Vassileva, 2012).
Therefore, there is a great opportunity to
combine behavioral economics and IS as these two
disciplines both seek to enhance the understanding
of the user. Both disciplines emphasize how context
and cognitive effects influence decision-making–the
IS field is mostly about information processing for
decision-making (Goes, 2013). Subsequently, we
have examined articles from the top IS journals and
have not found a comprehensive review that
addresses the research question below regarding the
integration of behavioral economic in IS.
The main research question that guided our research
is:
RQ: How can behavioral economics enhance
understanding of users and their interactions with
information systems?
3.2 Electronic Search
For the present review, a literature search was
conducted for the years between 2006 and 2014. The
keywords used were behavior(u)ral economics,
prospect theory, mental accounting, cognitive bias,
choice architecture, nudge, persuasive systems
design, persuasive technology, behavior(u)r change,
attitudes, and persuasion. This was to ensure that we
got a wide variety of article applying behavioral
economics principles and persuasive techniques.
The above keywords were used to search the
metadata related to the top eight IS journals (MIS
Quarterly, European Journal of Information Systems
(EJIS), Information Systems Journal (ISJ),
Information Systems Research (ISRe), Journal of
Information Technology (JIT), Journal of
Management Information Systems (JMIS), Journal
of Strategic Information Systems (JSIS), Journal of
the Association for Information Systems (JAIS)) in
Wiley, INFORMS PubsOnline, EBSCOhost,
ScienceDirect, Taylor Francis Online, and ProQuest
ABI/INFORM.
The search string resulted in 919 articles and
after excluding editorials, book reviews and
commentaries, and reviewing the abstracts, 63
articles remained, these were further reduced to 15
(Figure 1) based on the eligibility criteria below.
3.3 Eligibility Criteria
Inclusion and exclusion criteria were used to select
articles from the original search to be used in
answering our research question. Studies were
selected, if they: had behavioral economics in the
abstract, b) were full research papers (and not
editorials, commentaries), c) described the
persuasive/cognitive stimuli applied, d) investigated
the relation between the stimuli and (behavioral)
outcome. Articles were excluded, if they: a) only
discussed system implementation; b) were about
either general systems development or systems
development to meet organizational/individual needs
without a behavioral outcome; c) only discussed
systems benefit(s) to an organization; or d) were
purely on research methodology or systematic
reviews not related to the topic.
3.4 Data Extraction and Synthesis
The first author coded all the articles using
predefined criteria (devised by both authors) and any
uncertainty about a particular article was discussed
prior to its inclusion or exclusion based on the
eligibility criteria.
Each selected publication was examined for the
following elements: Objective of the study and
corresponding research question(s); study
environment and participants; themes emerging from
the study; and, the relevance of the studies’ results.
This was then followed by a synthesis of the
emergent themes and categorization of the articles
according to the cognitive/persuasive stimuli
studied. To integrate the search results and our
conceptualization of behavioral economic studies in
IS we applied context analysis as defined by Oinas-
Kukkonen and Harjumaa (2009) to categorize
articles (Tables 1-3) according to the objectives, the
cognitive principle(s) studied, the user and
technology contexts, and contribution of the study.
This categorization is suitable because of the level of
abstraction it enables in identifying the effects of the
measures used in the reviewed studies.
4 RESULTS
Analysis of these papers was based on the
aforementioned objectives and the results reveal a
difference in coverage of behavioral economics in
ICEIS 2017 - 19th International Conference on Enterprise Information Systems
20
the major IS journals. A majority of the articles were
from EJIS and ISRe. All but one of the journals
produced original results with data, and only two of
the articles (Goh and Bockstedt 2012; Adomavicius
et al. 2013) from ISRe contained behavioral
economics as a keyword in their abstracts. While the
following analysis is based on the 15 articles that we
have labeled–according to the persuasion context
analysis–as investigating a behavioral economic
principle, it is important to note that certain articles
(Tsai et al. 2010; Goh and Bockstedt 2012;
Adomavicius et al. 2013; Wu and Gaytán 2013; Park
et al. 2013; Chiu et al. 2014; Legoux et al. 2014)
much more strongly considered decision-making and
the valuation of presented choices than others (e.g.,
Blanco et al. 2010; Lee and Benbasat 2011).
Some articles, while explicitly focused on
investigating users’ valuation of choices,
additionally engaged with goals and design issues
that may not fall under the realm of behavioral
economics (Lankton and Luft, 2008; Angst and
Agarwal 2009; Blanco et al. 2010)
Figure 1: Literature search and selection process.
Accordingly, our classification of each of these
articles as investigating a behavioral economics
principle should be considered with this caution in
mind. As further noted in (Avineri, 2012), it is
important to acknowledge that behavioral economics
is not a homogenous field that can straightforwardly
be demarcated and there are opposing views as to
what counts as behavioral economics. A related
discussion can be found in a Q & A with R. Thaler
on what it really means to be a “Nudge” (Ubel
2015). The characteristics of the studies based on the
principle examined are presented in Tables 1-3.
Analysis of the persuasion context requires an
understanding of the occurrences in information
processing as the context assists in learning and
better understanding user behavior.
4.1 The Intent
Determining the intent involves defining the purpose
of an interactive system. Intentions can arise from
the creators of interactive systems, those who give
access to the system, and the individuals using the
systems (Fogg, 2003; Oinas-Kukkonen & Harjumaa,
2009). In the case of the current study, the intent is
derived from both the objectives of the reviewed
studies, the systems being studied, and their purpose.
Most of the studies were either Web or mobile-based
and involved either experimentation (Goh and
Bockstedt 2012; Wu and Gaytán 2013) or surveys
(Tsai et al. 2010; Park et al. 2013) Six of the studies
investigated various aspects of user behavior in
online stores. Chiu, Wang et al. (2014) use prospect
theory (Kahneman and Tversky, 1979) to highlight
decision-making under risk and why people continue
to buy from an online store. Prospect theory is used
to explain decision-making from a value maximizing
perspective and how, when one makes a decision,
s/he does not take into account the decision’s effect
on their consumption (Chiu et al. 2014).
Blanco et al. (2010) develop mock-ups based on
e-commerce practices to investigate the ideal
combination of presenting visual and textual
information and how various combinations of these
affect consumers’ cognitive states. Wu and Gaytán
(2013) discuss a risk-based conceptual framework to
help understand the role of seller reviews and
product prices on buyers’ willingness to pay.
Adomavicius et al. (2013) investigate the influence
of recommender systems’ ratings on consumers’
preferences by exploring anchoring, timing, system
reliability and granularity issues that are related to
their impact. Goh and Bockstedt (2013) apply
behavioral economic principles to examine seller’s
design choices and how these influence consumer
behavior.
Lankton and Luft (2008) apply behavioral
economic theories to study IT investment valuation
and predict the differences between intuitive
judgment and real options prescriptions. Ma et al.'s
(2014) study integrate gambling theory, the
Journal search
919 articles
identified
231 editorials and book
rev iews
excluded
688 articles
screened
625 excluded
by abstract
63 articles
considered
48 excluded for
not meeting criteria
15 articles
for final review
Behavioral Economics in Information Systems Research: A Persuasion Context Analysis
21
availability heuristic, and repeated behavior into a
framework that explains online gambling over time.
The rest of the studies examine various aspects of
human behavior in different environments. These
include, the role price and context play in mobile
service adoption (Blechar, Constantiou et al. 2006)
and the role consumer trust in online merchants
plays in purchase decisions (Liu and Goodhue
2012).
4.2 The Event
The event consists of the use, user and technology
contexts. These are the issues arising from the
problem domain, individual differences in people
that influence their information processing, and the
technologies or strategies employed in computer-
human and computer-mediated interaction (Oinas-
Kukkonen and Harjumaa, 2009). The use context
was not discussed in detail in any of the studies. This
is because they primarily concentrated on
investigating some aspect of user behavior related to
valuation of choices and/or presentation of
information, and proposing solutions and directions
for future research without going into details on the
actual use of the systems and/or features
investigated. As noted in Lehto and Oinas-
Kukkonen (2011) a high abstraction level in systems
descriptions makes it difficult to understand the
actual interactions taking place through the system
and the extent to which any potential outcome(s) are
due to the system’s intent.
The tested hypotheses and conducted
experiments in the studies provided a clearer picture
of the results’ relevance and their practical and
theoretical implications. For example, Chiu et al.’s
(2014) study extended prospect theory and provided
additional theoretical reasons why consumers
become more risk-seeking or less risk averse in
different circumstances. One of the practical
implications of their study was a suggestion of how
online sellers could attract potential buyers and turn
infrequent buyers into frequent ones. This was
through delivering guarantees on issues such as
security, inspiring customers and keepings
customers informed (Chiu et al., 2014).
The studies analyzed were about, 1) Web-based
environments which analyzed aspects of user
behavior (e.g. Chiu et al., 2014; Adomavicius et al.,
2013; Ma et al., 2014), 2) ways of improving user
interactions or understanding user actions online
(Legoux et al. 2014), 3) mobile-based services
(Blechar et al. 2006), and 4) the decision to use
certain systems (Constantiou et al. 2014). Although
these studies reported the technology context, as
their focus was mostly on studying users’ actions,
they did not provide a detailed description of the
technologies investigated.
4.3 The Strategy
Analysis of the strategy involves identifying the
route of message delivery–the underlying theories
applied in the studies to reach an intended audience,
the medium used, and the persuasion elements that
are conveyed in a message. A majority of the studies
investigated were not inherently persuasive,
therefore, the route used was either not described or
clearly discernable. Only in Angst and Agarwal
(2009) is there a mention of the route as the study,
investigating privacy concerns, is explicitly about
direct and indirect routes to persuasion. The study
highlights under which circumstances either or both
routes could be used. Unlike previous studies on the
ELM where the main focus was on attitude/opinion
change, Angst and Agarwal (2009) investigate a
choice process that could be cognitively taxing.
The message refers to the techniques used to
influence or alter users’ actions and in our study,
these are the principles (see Tables 1-3) applied in or
emerging from the reviewed articles. These included
how people react to information and/or choices
depending on how they are presented (framing)
(e.g., Goh and Bockstedt 2012), relying only on
information that confirms an initial assumption
while discounting opposing information
(confirmation bias) (e.g., Park et al., 2013), how loss
is more significant than an equivalent gain (loss
aversion) (e.g., Chiu et al. 2014), relying on one
piece of information (an anchor value) when making
decisions (anchoring) (e.g., Adomavicius et al.
2013), and application of persuasive principles (
explained by information processing-related theories
such as the ELM in investigating choice decisions)
in Websites to influence users (Angst and Agarwal
2009).
5 DISCUSSION
5.1 Contribution and Implications
It is important to understand how different
contextual issues affect users’ decision-making,
decision-making that may not always follow a
systematic pattern. Behavioral economics recognizes
that people are influenced by who they communicate
with, their reactions are shaped by predictable
mental cues (heuristics), people are strongly
ICEIS 2017 - 19th International Conference on Enterprise Information Systems
22
influenced by others’ actions, relevant innovations
draws our attention, people’s acts are often
subconsciously influenced, people seem to be
consistent with their public promises and often have
an urge to reciprocate acts of kindness (Thaler and
Sunstein, 2008; Ariely, 2008; Dolan et al. 2010;
Thorgeirsson and Kawachi, 2013).
Behavioral economics has the potential to be an
important enabler of sustained behavior change,
especially in technology-mediated environments.
Behavioral economics also offers means to obtain a
deeper understanding of how IS and the design of IS
can influence users. Primarily because effective
persuasive communication is about correctly
interpreting the purpose of an IS–the intent.
This communication can be disrupted the noise
sometimes created by people’s cognitive biases
related to their judgment and decision-making
(Ariely 2008). As such, the educational approach
and the assumption that people are rational actors
prevalent in persuasive systems design and most IS-
related theories such as the technology acceptance
model (TAM) (Markus and Tanis 2000; DiSalvo et
al. 2010; Lee et al. 2011; Brynjarsdottir et al. 2012)
is not the most effective approach to driving
(behavior) change. Rather, an understanding of
people’s regular biases can be more useful for
stimulating change (e.g., Blechar et al., 2006;
Adomavicius et al., 2013; Goh and Bockstedt, 2013;
Ma et al., 2014).
Related to this, we asked one major question in
this paper: “How can behavioral economics enhance
understanding of users and their interactions with
information systems?” To examine behavioral
economics research specific to IS, we turned to the
major IS journals. We were particularly interested in
studies investigating various behavioral economic
principles related to valuation, the effects of
cognitive stimuli on choices, and how these relate to
and can be explained by persuasion context analysis.
The choice of the eight IS journals was because
the major contributions in a particular field are likely
to be in the leading journals (Webster and Watson,
2002) and studies accepted in these fora are usually
concise and comprehensive, detailing all the relevant
aspects of the particular field studied. Although,
Webster and Watson (2002) also suggest searching
for articles elsewhere after the initial search in the
major journals. In this study, we limited the search
to only the basket of eight. We also concentrated on
the major journals because we were interested in
those studies focusing on the IS community and thus
excluded from review behavioral economics studies
meant for other audiences such as psychology and
marketing. Consequently, this review can be
considered as the first attempt in synthesizing
behavioral economics studies in IS research.
Furthermore, we have also discussed the limitations
of IS and looked at ways behavioral economics with
its focus on judgment and decision-making can help
address some of these limitations.
In terms of coverage, the findings suggest that 1)
there is great potential in enhancing research in the
two fields especially as one entails incorporation of
cognitive, emotional and environmental principles in
decision-making and the other is about information
processing for decision-making. 2) There has been
an increase in the studies integrating the application
of behavioral economic principles in IS, the majority
of which have focused on online retail stores and
recommender systems. 3) Considering some of the
limitations of IS, behavioral economics in its
grounding on cognitive theories as shown in the
reviewed studies, offers possibilities to enhance both
IS design and implementation and PSD and 4) the
decision-making process is not consistent. The study
of behavioral economics principles in most cases
should involve field and/or experimental tests to
determine the underlying theoretical relationships in
order to enhance the clarity of the studies and the
principles applied.
In the previous section, we have positioned the
behavioral economics literature based on context
analysis and although there were similarities in
approach as mentioned above, the studies analyzed
were not about behavior change, which is a key
concept in persuasive systems research. Inherently,
they do involve change, but the coverage of the
change and the actual aspect changing is limited.
Additionally, most of the studies do not factor in
differing user characteristics and how these
differences may lead to varied responses to stimuli.
Therefore, in context analysis, as viewed from the
persuasive systems domain, not all factors could be
applied which has implications for the findings.
In behavioral economics, the behavioral
assumption is that people often act irrationally
(Ariely 2008) and not all their actions can be
reasonable and/or according to predefined criteria–
there is always a need to understand the audience
and the context in which information is received.
The prevailing environment and one’s emotional
state affects decision-making. Thus, behavioral
economics investigates the scope of decisions
regarding finances, health, and dietary choices that
people make (Ariely 2008). The persuasive element
involves presenting these choices in a way that
leverages people’s decision making and persuades
them to make self-beneficial decisions (Lee et al.
2011). The psychological barriers that prevent
Behavioral Economics in Information Systems Research: A Persuasion Context Analysis
23
desired behaviors should be understood and this
knowledge incorporated into decision-making and
systems design. As Wu & Du (2012) have stated, in
order to better understand system-use behavior,
especially in behavioral economics research,
researchers need to enhance their conceptualization
and measures of system usage which also factor in
the information quality and complexity of the IS
environment.
5.2 Limitations and Future Research
For this study, we concentrated only on articles from
the major IS journals and as comprehensive as these
are, they may not present all the relevant information
that has been conducted. Especially when one
considers that behavioral economics is a relatively
new field and IS research is itself multidisciplinary
so there may be other relevant studies outside the IS
realm. For example, examining articles from well-
known conference and workshop proceedings.
Secondly, our search was meant to produce a large
number of articles for review. But by including
additional terms in the search string (e.g., known
behavioral economic principles (cognitive biases
prevalent in judgement and decision-making) such
as framing, priming, incentives etc.) and searching
in other online libraries and databases, a highly-
focused pool of potential articles for review could
have been found. Lastly, in persuasion context
analysis since the articles did not prescribe to
persuasive systems design, interpretive
categorization, which may be subjective, was used.
Further research to extend the scope of the search
is planned and specifically to investigate how
behavioral economic principles can be integrated in
both IS research and more concentrated persuasive
systems design. As most of the studies included in
the current review have focused on examining
aspects of human behavior, a potential avenue for
future research would be to implement some of the
principles in actual systems design and study the
subsequent effects. For example, how varying the
allocation and rate of rewards combined with social
support in incentive schemes could influence goal
achievement.
Furthermore, the reviewed studies are very
diverse in nature. Some studies focused on
behavioral IS and others on the economics of IS.
Future research could examine whether there are any
differences in adopting behavioral economics
between different fields of research and the
implication(s) this has for the findings.
Table 1: Characteristics of studies related to framing.
Study Objective User context Technology
context
Contribution
Blanco et
al., 2010
Examine how product
presentation affects recall and
perceptions on quality
(framing)
Graduate and
Postgraduate
students
(N=108)
Mock websites
based on e-
commerce
practices
Confirmation of the importance
of product presentation online,
consumer characteristics, and
how people perceive and process
product information
Goh &
Bockstedt,
2013
Measure whether framing
influences consumers’ value of
customizable bundle offers
from online stores (framing)
Behavioral
experiments
(N=454)
Online
streaming and
movie rentals
The technology-driven context
of a purchase decision can have
significant effects on consumer
choices and economic outcomes.
Tsai et al.,
2011
Investigate whether
prominence of privacy
information influences
incorporation of privacy
considerations in online
purchasing decisions.
(Salience, framing, and
priming)
Online
responses to a
concerns
survey and a
shopping
experiment
(N=238)
Shopping
search engine
interface,
Privacy Finder
New insight into consumers’
valuations of personal data and
evidence that privacy
information affects online
shopping decision-making.
Angst &
Agarwal
2009
Investigate whether persuasion
can change attitudes and opt-in
intentions toward electronic
health records even in the
presence of significant privacy
concerns. (Persuasion and
framing)
Participants
(attendees to
a conference
and online
survey)
(N=366)
Electronic
health records
Even when people have high
concerns for privacy, their
attitudes can be positively
altered with appropriate message
framing. These results as well as
other theoretical and practical
implications are discussed.
ICEIS 2017 - 19th International Conference on Enterprise Information Systems
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Table 2: Characteristics of studies related to risk aversion and confirmation bias.
Study Objective User context Technology
context
Contribution
Chiu et al.,
2014
Understand reasons for
customers’ repeat purchase
in online retail stores and
the effect perceived risk
would have. (Risk aversion)
Customers of
Yahoo! Kimo
in Taiwan
(N=782)
Yahoo!
Kimo -
online
shopping
store
The moderating effect of perceived
risk, extends prospect theory and
provides additional theoretical
reasons for risk seeking and risk
averseness in consumers.
Wu &
Gaytan,
2013
Apply the buyers’ risk
perspective to reconcile and
explain seemingly
conflicting results in
previous literature. (Risk
aversion and framing)
Undergraduates
students
(N=78)
eBay auction
site
(empirical
study)
Customers have different risk
preferences and thus select sellers
with different risk profiles to match
their risk appetites.
Park et al.,
2013
Explore the extent investors
are subject to confirmation
bias in the context of
exposure to information on
message boards.
(Confirmation bias)
Investors in
South Korea
(N=502)
Stock
message
boards
Confirmation bias plays a great
role in investment decision-making
in numerous contexts e.g., project
management.
Legoux al.,
2014)
Investigate how experts’
investment decisions are
affected by cognitive biases.
(Confirmation bias)
Participants
from a
financial
institution
(N=100)
N/A Prediction accuracy about market
reactions to IT investments was
hampered by confirmation biases.
Table 3: Characteristics of studies related to other biases.
Study Objective User context Technology
context
Contribution
(Adomaviciu
s et al., 2013)
Explore how preferences at the
time of consumption are
influenced by recommender
systems’ predictions.
(Anchoring effects)
Participants
N = 216
Recommender
systems
Viewers’ preference ratings are
malleable and can be
significantly influenced by the
recommendation received.
(Liu &
Goodhue,
2012)
Explain the role of potential
users’ trust in creating
intention to revisit a website
(Bounded Rationality)
Undergraduat
e MIS
students
(N=314)
Website
which
redirects to
12 other
websites
Consumer trust in e-vendor
plays a major role in purchasing
services
(Blechar et
al., 2006)
Explore the influence of
reference situations and
reference pricing on mobile
service users’ behavior.
(Reference pricing and
Reference situation)
Students and
employees in
the public
sector
(N=74)
Mobile
services
The benefits of approaching
mobile service adoption and use
research in a holistic manner
and the importance of
considering the reference point
on mobile usage behaviors.
(Ma, Kim et
al. 2014)
Develop and test a
model of online gambling that
simultaneously takes into
account cumulative and recent
outcomes, and prior use.
(Availability heuristic)
Actual users
of a gambling
website
(N=22, 304)
Bwin
Interactive
Entertainment
(Internet
gambling)
Integration of gambling theory,
the availability heuristic, and
repeated behavior into a
framework that explains online
gambling over time.
Behavioral Economics in Information Systems Research: A Persuasion Context Analysis
25
Table 3: Characteristics of studies related to other biases (cont.).
Study Objective User context Technology
context
Contribution
(Constantiou
et al., 2014)
Investigate cognitive processes
involved in the decision to use
location based services (LBS)
and how they influence
information retrieval behaviors.
(Cognitive processes in decision-
making)
Young
smartphone
users
(N=66)
Location-
based services
in the German
telecommunica
tions market
A new conceptual framework to
investigate LBS use and
complement existing models in
user behavior research.
(Lee,
Benbasat
2011)
Extend the effort-accuracy
perspective of understanding
users’ recommendation agents’
(RA) acceptance by including
trade-off difficulty. (Cognitive
aspects of decision-making)
Students at a
large North
American
university
(N= 100)
Web-based
recommendati
on agents
Explains role of preference
elicitation methods (PEMs) in
assisting users with trade-off
difficulty across different
decision contexts Perceived effort
compared to previous research no
longer has a significant influence
in the loss condition.
(Lankton &
Luft 2008)
Provide theory-based
predictions of how consistency
between intuition and
normative real options value
varies for deferral and growth
investment options under
differing conditions. (Intuitive
judgment and regret theory)
MBA students
from a
Midwestern
public
university in
the United
States
(N=70)
N/A Techniques by which
organizations can limit unwanted
effects of regret and
overaggressive competitive
behavior.
6 CONCLUSIONS
The current study attempted to understand the
integration of behavioral economics in IS research
by reviewing the major IS journals. The study chose
a wide perspective in its search for articles that was
intended to capture a broad spectrum of articles that
covered the application of behavioral economics and
integrated persuasive systems design to some extent.
This explains why our eligibility criteria consisted of
issues pertaining to the user and their use (their
actions, intentions) of technology. The research was
also driven by the need for a more profound
understanding of the different principles of
behavioral economics and their application. By
understanding the extant literature in the field,
similarities and complementary properties with other
disciplines can be integrated, and in the case of IS,
improved methods of understanding users and their
actions can be used for better prevention and
intervention techniques especially in the domains of
health and sustainability. Behavioral economics with
its focus on understanding why sub-optimal choices
are made offers great opportunities in IS research by
highlighting these issues and how to counter them,
which can inform systems design.
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