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[Commlist] CfP: JCIRA Special Issue "Emerging Issues in Computational Advertising"
Wed Jan 04 18:57:14 GMT 2023
Journal of Current Issues in Advertising Research -- Special Issue
"Emerging Issues in Computational Advertising"
Submission deadline for special issue: November 1, 2023 (authors
interested in publishing their work in this special issue are encouraged
to submit their extended abstract to the special track of the 2023
Global Marketing Conference; Extended Abstract Submission Deadline:
January 16, 2023https://2023gmc.imweb.me/ <https://2023gmc.imweb.me/>)
The Journal of Current Issues in Advertising (JCIRA) is calling for
articles that discuss emerging issues and advances in computational
advertising. Over the last decade, computational advertising has been
praised for replicating "what humans might do if they had the time to
read Web pages to discern their content and find relevant ads among the
millions available" (Essex, 2009, p. 16). Computational advertising has
expanded to become "a broad, data driven advertising approach relying on
or facilitated by enhanced computing capabilities, mathematical
models/algorithms, and the technology infrastructure to create and
deliver messages and monitor/surveil" individual behaviors (Huh &
Malthouse, p. 1).
By handling massive data in real time, computational advertising
quantifies consumer characteristics and experiences to personalize
advertising messages, target media content, and simplify consumer
decision making. Algorithms drive targeted content to maximize message
frequency, reach, ROI, and lift.
The rapidly growing field of computational advertising involves numerous
systems including information retrieval, behavioral analytics, and
decision making (Yang et al., 2017) and is thus relevant for
interdisciplinary research such as advertising, marketing, computer
science, linguistics, and economics.
Issues in the advertising landscape
Beyond its use as a marketing tool, computational advertising can be
socially influential. First, across platforms, consumers are inundated
with disruptive and frustrating advertisements. Despite state-of-the-art
digital ad targeting models, Millennials and Gen Zs particularly
disparage digital advertising for being irrelevant, useless, and
deceptive (Lineup, 2021). Nevertheless, by synthesizing relevant
messages based on consumer and/or context information, computational
advertising is potentially able to overcome negative perceptions.
Second, marketers and advertisers are widely disdained for providing
disinformation. A NewsGuard and Comscore study of programmatic
advertising found that brands spend billions on algorithms intended to
provide advertisements that maximize engagement, but unfortunately often
amplify misinformation (Eisenstat, 2019; Skibinski, 2022). Computational
advertising, however, can enhance brand safety by identifying
inappropriate or incorrect content and preventing brands from misplacing
ads next to reputation-harming content. Furthermore, targeting
techniques can be used to correct disinformation or create public
service announcements that promote media literacy so that consumers
learn about consequences associated with data breaches, algorithmic
biases, or mis/disinformation.
Third, advertisers and researchers can potentially use innovative new
computational methods to measure key interests such as attitudes and
emotions. For example, affective computing examines emotions by
analyzing online activities of thousands of individuals in natural
settings (D'Mello et al., 2018). It can be used to detect, interpret,
and respond to human emotions before, during, and after ad exposure.
Consequently, affective computing could be used to overcome challenges
such as response biases and sampling errors. Simultaneously, as abstract
concepts, emotions and affect are difficult to link with appropriate
indicators or to map with proxies (Roy et al., 2013). Despite multiple
challenges, future developments will enable affective computing to
better respond and adapt to emotional states.
Consumers are increasingly concerned about privacy violations, lost
control over personal information (Auxier et al., 2019), and biases
built into algorithms and targeted advertising (e.g., Hao, 2019; Kant,
2021). Advertising ethicists have called targeted advertising "one of
the world's most destructive trends" (Mahdawi, 2019) because
computational methods can be used to predict individual personalities,
needs, or emotional states and use those insights to drive political
preferences. The Cambridge Analytica scandal particularly exposed
personalized advertising as a prejudicial force in the 2016 U.S.
Presidential Election and the Brexit referendum (e.g., Cadwalladr &
Graham-Harrison, 2018; Grassegger & Krogerus, 2017). Can computational
advertising be used ethically to create relevant messages without
violating privacy or enhancing biases?
Finally, computational advertising struggles to establish its worth.
Attribution modeling, long challenged for inaccuracy, has become
increasingly difficult under new privacy regulations and settings.
Authors such as Tim Hwang (2020) argue that digital advertising is
ineffective. Indeed, effectiveness is difficult to establish (e.g.,
Edelman, 2020; Frederik & Martijn, 2019), but attribution modeling is
expected to evolve in its capacity to create, execute, and evaluate
advertising programs (Yun et al., 2020).
Potential topics for the special issue on emerging issues in
computational advertising
This special issue will publish original, high-quality papers that
examine the theoretical, methodological, ethical, or practical
implications of computational advertising. Suggested topics are listed
below, but we are open to other relevant themes regarding computational
advertising:
* Definitions and measurements of concepts
* Computational advertising and its relation to disinformation
* Brand safety in the age of computational advertising
* Ethical issues related to computational advertising
* Consumer privacy in the age of computational advertising
* Authentic versus fake advertising
* Measurement issues in computational advertising
* Societal value of computational advertising
* Algorithmic synthesis of creatives
* Short-term behaviors versus long-term valuations
* Trust and its role in computational advertising
Submission information
All manuscripts submitted must not have been published, accepted for
publication, or be currently under consideration elsewhere.
No payment from the authors of manuscripts accepted for publication will
be required.
Direct inquiries to the Special Issue Editors
Su Jung Kim -- Assistant Professor, Public Relations, Annenberg School
for Communication and Journalism, University of Southern California
((sujung.kim /at/ usc.edu) <mailto:(sujung.kim /at/ usc.edu)>)
Ewa Maslowska -- Assistant Professor, Charles H. Sandage Department of
Advertising, College of Media, University of Illinois at
Urbana-Champaign ((ehm /at/ uiuc.edu) <mailto:(ehm /at/ uiuc.edu)>)
Joanna Strycharz -- Assistant Professor, Amsterdam School of
Communication Research (ASCoR), University of Amsterdam
((J.Strycharz /at/ uva.nl) <mailto:(J.Strycharz /at/ uva.nl)>)
For More Information:
Journal of Current Issues and Research in
Advertising:https://www.tandfonline.com/journals/ujci20
<https://www.tandfonline.com/journals/ujci20>
2023 Global Marketing Conference at Seoul:https://2023gmc.imweb.me/
<https://2023gmc.imweb.me/>
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