Authors
Rong Jin, Joyce Y Chai, Luo Si
Publication date
2004/7/25
Book
Proceedings of the 27th annual international ACM SIGIR conference on Research and development in information retrieval
Pages
337-344
Description
Collaborative filtering identifies information interest of a particular user based on the information provided by other similar users. The memory-based approaches for collaborative filtering (e.g., Pearson correlation coefficient approach) identify the similarity between two users by comparing their ratings on a set of items. In these approaches, different items are weighted either equally or by some predefined functions. The impact of rating discrepancies among different users has not been taken into consideration. For example, an item that is highly favored by most users should have a smaller impact on the user-similarity than an item for which different types of users tend to give different ratings. Even though simple weighting methods such as variance weighting try to address this problem, empirical studies have shown that they are ineffective in improving the performance of collaborative filtering. In this paper, we …
Total citations
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Scholar articles
R Jin, JY Chai, L Si - Proceedings of the 27th annual international ACM …, 2004