Subject: | [wkwi] Call for Papers: Special Issue on "Recommendation Systems (RS) in Electronic Markets" |
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Date: | Fri, 25 Jan 2019 17:12:10 +0100 |
From: | Electronic Markets <editors@electronicmarkets.org> |
Reply-To: | Electronic Markets <editors@electronicmarkets.org> |
To: | wkwi@listserv.dfn.de |
Electronic
Markets – The International Journal on Networked Business
Call for Papers: Special Issue on
“Recommendation Systems (RS) in Electronic Markets”
Guest Editors
* Ravi S. Sharma, University of Canterbury, New
Zealand, rs.sharma@canterbury.ac.nz
* Eldon Li, California Polytechnic, San Luis, USA
& Tongji University, Shanghai, China, eli@calpoly.edu
* Aijaz A. Shaikh, University of Jyväskylä,
Finland, aijaz.a.shaikh@jyu.fi
Theme
This special issue
focuses on the use of recommendations or suggestions from
the marketplace in order to capture value. The business
value of a recommendation or suggestion is that it helps
e-businesses (including e-commerce) and social media
platforms to uncover associations that are amongst large
amounts of transactions data, for the purpose of providing
personalized shopping suggestions and recommendations to
consumers. A Recommendation Systems (RS), therefore, would
be a significant opportunity for monetization providing a
competitive advantage to firms in the electronic marketplace
by helping with up- and cross-sales (Heimbach et al., 2015),
reducing consumers’ costs for searches (Köhler et al., 2016)
and other innovative forms of bundling digital products.
Development of
state-of-the-art RS — defined as software agents that are
widely utilized in online platforms to elicit users’
preferences and interests to generate product or service
recommendations (Heimbach et al., 2015) — is becoming
popular in the e-commerce industry for retrieving and
recommending the most relevant information regarding items,
services, and products for users (Khan et al., 2018). It is
an intuitive step to overcome the information overload
problem in electronic markets. Recently, Hsu et al (2018)
reported after an extensive survey of the RS literature, a
mapping of RS techniques with application domains with the
potential of significant impact. However, the report did
not provide specific frameworks, models, measures or
use-cases for success.
For example, Business
Insider reported in 2017 that over 80% of the Netflix
business was generated from its RS and the remaining less
than 20% was generated from searches. Netflix believes that
it would lose US$1 billion or more, yearly, if not for
personalized recommendation engine that maintains its
subscribers. Google recently introduced an improved design
and RS to the Home screen of its YouTube application, in
order to entice viewers to continue to watch the videos, and
to “…create the feeling that YouTube understands you.”
Apple’s Watch List will recommend content and present
accompanying marketing messages across their Apple TV
devices, through a “…universal search and suggestion
mechanism…” that delivers the content as quickly as
possible. MightyTV is a meta-RS which allows consumers to
swipe through a list of movies or shows across
service-providers such as Netflix, Hulu, or HBO, and
consequently suggests new shows that they should watch,
based on profiles. In a value-added feature, known as
“mash-up,” consumers can connect with friends for the RS
algorithm to model what their tastes have in common, from
shows to specific actors. However, while high-quality,
personalized recommendations can benefit users, online
businesses may violate laws if they collect too much user
data or if they globalize its use.
It is therefore timely
to consider state-of-the-art strategies, approaches, and
case studies of RS that may be adopted in global electronic
markets.
Central issues and
themes
Possible topics of
submissions for this special issue focus on the past and
future evolution of electronic markets as well as of
networked business. Topics may include but are not
restricted to:
* Frameworks and models for effective RS in the
global, networked economy
* Mapping state-of-the-art RS techniques to
characteristics of electronic markets
* The applications of RS in social-commerce,
m-commerce, e-government, e-tourism, e-learning, and
crowd-sourcing
* Global consumer and business perspectives on RS
* RS architecture for business value creation and
capture
* Trends and directions of RS platforms,
services, and applications
* Approaches to monetizing of effective RS
* Legal and ethical issues in aggregate user data
protection (e.g., a differential privacy model, post General
Data Protection Regulations)
* Benchmarking RS effectiveness with social media
and networks
* Predictive and prescriptive analytics for RS
* Innovative use-cases of RS in next-generation
electronic markets (i.e., beyond mobile, social commerce)
* Business outcomes of RS in industry clusters
We encourage
contributions with a broad range of methodological
approaches, including conceptual, qualitative and
quantitative research. Please also consider that position
papers and case studies might be especially suited for this
special issue. All papers should fit the scope of Electronic
Markets (for more information see http://www.electronicmarkets.org/about-em/scope/) and will undergo a double-blind peer review
process. If you would like to discuss any aspect of the
special issue, please contact the guest editors.
Submission
Electronic Markets is a
SSCI-listed journal (IF 3.818) and requires that all papers
must be original and not published or under review
elsewhere. Papers must be submitted via our the journal’s
electronic submission system at http://elma.edmgr.com and conform to Electronic Markets publication
standards (see instructions and templates at http://www.electronicmarkets.org/authors). Please note that the preferred length for
research articles is around 8,000 words, excluding
references.
Important deadline
* Submission Deadline:
June 1, 2019
References
Hsu, P. Y., Lei, H. T.,
Huang, S. H., Liao, T. H., Lo, Y. C., & Lo, C. C.
(2018). Effects of sentiment on recommendations in social
network. Electronic Markets, 28(1), 1-10. [online]
Heimbach, I.,
Gottschlich, J., & Hinz, O. (2015). The value of user’s
Facebook profile data for product recommendation generation.
Electronic Markets, 25(2), 125-138.
J. Lu, D. Wu, M. Mao, W.
Wang, & G. Zhang (2015). Recommender system application
developments: a survey, Decision Support Systems, 74, 12–32.
Khan, Z. A., Chaudhary,
N. I., & Zubair, S. (2018). Fractional stochastic
gradient descent for recommender systems. Electronic
Markets, (28) 1-11. [online]
Köhler, S., Wöhner, T.,
& Peters, R. (2016). The impact of consumer preferences
on the accuracy of collaborative filtering recommender
systems. Electronic Markets, 26(4), 369-379.
Rainer Alt and Hans-Dieter Zimmermann
Editors-in-Chief
Electronic Markets - The International Journal
on Networked Business
c/o Information Systems Institute
Leipzig University
Grimmaische Str. 12,
04109 Leipzig, Germany
http://www.electronicmarkets.org/
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