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Erschienen in: World Wide Web 6/2019

07.07.2018

Evidence-driven dubious decision making in online shopping

verfasst von: Qiao Tian, Jianxin Li, Lu Chen, Ke Deng, Rong-hua Li, Mark Reynolds, Chengfei Liu

Erschienen in: World Wide Web | Ausgabe 6/2019

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Abstract

Nowadays, Online shopping has been tremendous lifestyle choices due to the lower management cost for product/service providers and the cheaper prices for buyers/customers. Meanwhile, it raises a big challenge for both buyers and sellers to identify the right product items from the numerous choices and the right customers from a large number of different buyers. This motivates the study of recommendation system which computes recommendation scores for product items and filters out those with low scores. Recently, a promising direction involves the consideration of the social network influence in recommendation system. While significant performance improvement has been observed, it is still unclear to which extension the social network influence can help differentiate product items in terms of recommendation scores. This is an interesting problem in particular in the situation that the recommended product items have the highly similar (or identical) scores. As the first effort to this problem, this paper probes the boundary of social network influence to recommendation outputs by solving an optimization problem called evidence-driven dubious decision making. Two solutions have been proposed and the evaluation on two real world datasets has verified the effectiveness of the proposed solutions.

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Metadaten
Titel
Evidence-driven dubious decision making in online shopping
verfasst von
Qiao Tian
Jianxin Li
Lu Chen
Ke Deng
Rong-hua Li
Mark Reynolds
Chengfei Liu
Publikationsdatum
07.07.2018
Verlag
Springer US
Erschienen in
World Wide Web / Ausgabe 6/2019
Print ISSN: 1386-145X
Elektronische ISSN: 1573-1413
DOI
https://doi.org/10.1007/s11280-018-0618-6

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