Authors
Samaneh Moghaddam, Mohsen Jamali, Martin Ester
Publication date
2012/2/8
Book
Proceedings of the fifth ACM international conference on Web search and data mining
Pages
163-172
Description
Online reviews are valuable sources of information for a variety of decision-making processes such as purchasing products. As the number of online reviews is growing rapidly, it becomes increasingly difficult for users to identify those that are helpful. This has motivated research into the problem of identifying high quality and helpful reviews automatically. The current methods assume that the helpfulness of a review is independent from the readers of that review. However, we argue that the quality of a review may not be the same for different users. For example, a professional and an amateur photographer may rate the helpfulness of a review very differently. In this paper, we introduce the problem of predicting a personalized review quality for recommendation of helpful reviews. To address this problem, we propose a series of increasingly sophisticated probabilistic graphical models, based on Matrix Factorization …
Total citations
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Scholar articles
S Moghaddam, M Jamali, M Ester - Proceedings of the fifth ACM international conference …, 2012