Leveraging prior ratings for recommender systems in e-commerce

Journal Article (2014)
Author(s)

Guibing Guo (Nanyang Technological University)

Jie Zhang (Nanyang Technological University)

Daniel Thalmann (Nanyang Technological University)

Neil Yorke-Smith (American University of Beirut, University of Cambridge)

DOI related publication
https://doi.org/10.1016/j.elerap.2014.10.003 Final published version
More Info
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Publication Year
2014
Language
English
Journal title
Electronic Commerce Research and Applications
Issue number
6
Volume number
13
Pages (from-to)
440-455
Downloads counter
153

Abstract

User ratings are the essence of recommender systems in e-commerce. Lack of motivation to provide ratings and eligibility to rate generally only after purchase restrain the effectiveness of such systems and contribute to the well-known data sparsity and cold start problems. This article proposes a new information source for recommender systems, called prior ratings. Prior ratings are based on users' experiences of virtual products in a mediated environment, and they can be submitted prior to purchase. A conceptual model of prior ratings is proposed, integrating the environmental factor presence whose effects on product evaluation have not been studied previously. A user study conducted in website and virtual store modalities demonstrates the validity of the conceptual model, in that users are more willing and confident to provide prior ratings in virtual environments. A method is proposed to show how to leverage prior ratings in collaborative filtering. Experimental results indicate the effectiveness of prior ratings in improving predictive performance.