| Clustering for probabilistic model estimation for CF |
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International World Wide Web Conference
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Special interest tracks and posters of the 14th international conference on World Wide Web
table of contents
Chiba, Japan
POSTER SESSION: Posters
table of contents
Pages: 1104 - 1105
Year of Publication: 2005
ISBN:1-59593-051-5
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Authors
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Qing Li
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Information & Communications University, Daejeon, Republic of Korea and Kumoh National Institute of Technology,Kumi, kyungpook, Republic of Korea
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Byeong Man Kim
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Kumoh National Institute of Technology,Kumi, kyungpook, Republic of Korea
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Sung Hyon Myaeng
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Information & Communications University, Daejeon, Republic of Korea
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Downloads (6 Weeks): 3, Downloads (12 Months): 33, Citation Count: 1
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ABSTRACT
Based on the type of collaborative objects, a collaborative filtering (CF) system falls into one of two categories: item-based CF and user-based CF. Clustering is the basic idea in both cases, where users or items are classified into user groups where users share similar preference or item groups where items have similar attributes or characteristics. Observing the fact that in user-based CF each user community is characterized by a Gaussian distribution on the ratings for each item and the fact that in item-based CF the ratings of each user in item community satisfy a Gaussian distribution, we propose a method of probabilistic model estimation for CF, where objects (user or items) are classified into groups based on the content information and ratings at the same time and predictions are made considering the Gaussian distribution of ratings. Experiments on a real-world data set illustrate that our approach is favorable.
REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
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Badrul Sarwar , George Karypis , Joseph Konstan , John Reidl, Item-based collaborative filtering recommendation algorithms, Proceedings of the 10th international conference on World Wide Web, p.285-295, May 01-05, 2001, Hong Kong, Hong Kong
[doi> 10.1145/371920.372071]
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Breese, J. S., Heckerman, D. and Kardie, C. (1998). Empirical Analysis of Predictive Algorithms for Collaborative Filtering. In Proc. Of the 14th UAI, pp.43--52.
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