Browse > Article

CLASSIFICATION FUNCTIONS FOR EVALUATING THE PREDICTION PERFORMANCE IN COLLABORATIVE FILTERING RECOMMENDER SYSTEM  

Lee, Seok-Jun (Department of Management Information System, Sangji University)
Lee, Hee-Choon (Department of Computer Data Information, Sangji University)
Chung, Young-Jun (Department of Computer Science, Kangwon National University)
Publication Information
Journal of applied mathematics & informatics / v.28, no.1_2, 2010 , pp. 439-450 More about this Journal
Abstract
In this paper, we propose a new idea to evaluate the prediction accuracy of user's preference generated by memory-based collaborative filtering algorithm before prediction process in the recommender system. Our analysis results show the possibility of a pre-evaluation before the prediction process of users' preference of item's transaction on the web. Classification functions proposed in this study generate a user's rating pattern under certain conditions. In this research, we test whether classification functions select users who have lower prediction or higher prediction performance under collaborative filtering recommendation approach. The statistical test results will be based on the differences of the prediction accuracy of each user group which are classified by classification functions using the generative probability of specific rating. The characteristics of rating patterns of classified users will also be presented.
Keywords
Pre-evaluation; collaborative filtering; classification function;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 P. Resnick, N. Iacovou, M. Suchak, P. Bergstorm and J. Riedl, GroupLens: An Open Architecture for Collaborative Filtering of Netnews, Proc. of ACM 1994 Conference on Computer Supported Cooperative Work, Oct. 1994, 175-186.
2 J. Schafer, J. Konstan and J. Riedle, Recommender systems in e-commerce, Proc. of the 1st ACM conference on Electronic commerce, Nov. 1999, 158-166.
3 G. Adomavicius and A. Thzhilin, Toward the Next Generation of Recommender Systems: A Survey of the State-of-the-Art and Possible Extensions, IEEE Transactions on Knowledge and Data Engineering, 17 (2005), 734-749.
4 J. Breese, D. Heckerman and C. Kadie, Empirical An alysis of Predictiye Algorithms for Collaborative Filtering, Proc. the 14th Annual Conference on Uncertainty in Artificial Intelligence, July, 1998, 43-52.
5 M. Condliff, D. Lewis, D. Madigan, and C. Posse, Bayesian Mixed-Effects Models for Recommender Systems, Proc. ACM SIGIR '99 Workshop Recommender Systems: Algorithms and Evaluation, Aug. 1999.
6 A. Popescul, L. Ungar, D. Pennock and S. Lawrence, Probabilistic Models for Unified Collaborative and Content-Based Recommendationin Sparse-Data Environments, Proc 17th Conference on Uncertainty in Artificial Intelligence, Aug. 2001, 437-444.
7 S. Lee, S. Kim, H. Lee, Pre-Evaluation for Detecting Abnormal Users in Recommender System, J. the Korean Data & Information Science Society, 18 (2007), 619-628.   과학기술학회마을
8 H. Lee, Enhancement of Collaboragive Filtering in Electronic Comrnerce Recommender Systems, PhD thesis, Kangwon National University, 2009.
9 G. Linden, B. Smith, and J. York, Amazon.com Recommendations: Item-to-Item Collaborative Filtering, IEEE Internet Computing, 7 (2003), 76-80.   DOI   ScienceOn