Title :
Collaborative Filtering for Multi-class Data Using Belief Nets Algorithms
Author :
Su, Xiaoyuan ; Khoshgoftaar, Taghi M.
Author_Institution :
Comput. Sci. & Eng., Florida Atlantic Univ., Boca Raton, FL
Abstract :
As one of the most successful recommender systems, collaborative filtering (CF) algorithms can deal with high sparsity and high requirement of scalability amongst other challenges. Bayesian belief nets (BNs), one of the most frequently used classifiers, can be used for CF tasks. Previous works of applying BNs to CF tasks were mainly focused on binary-class data, and used simple or basic Bayesian classifiers (Miyahara and Pazzani, 2002; Breese et al., 1998). In this work, we apply advanced BNs models to CF tasks instead of simple ones, and work on real-world multi-class CF data instead of synthetic binary-class data. Empirical results show that with their ability to deal with incomplete data, extended logistic regression on naive Bayes and tree augmented naive Bayes (NB-ELR and TAN-ELR) models (Greiner et al., 2005) consistently perform better than the state-of-the-art Pearson correlation-based CF algorithm. In addition, the ELR-optimized BNs CF models are robust in terms of the ability to make predictions, while the robustness of the Pearson correlation-based CF algorithm degrades as the sparseness of the data increases
Keywords :
belief networks; data handling; groupware; information filtering; Bayesian belief nets; Pearson correlation-based collaborative filtering; data sparseness; extended logistic regression; multiclass collaborative filtering data; recommender system; tree augmented naive Bayes model; Bayesian methods; Collaboration; Collaborative work; Filtering algorithms; Logistics; Predictive models; Recommender systems; Regression tree analysis; Robustness; Scalability;
Conference_Titel :
Tools with Artificial Intelligence, 2006. ICTAI '06. 18th IEEE International Conference on
Conference_Location :
Arlington, VA
Print_ISBN :
0-7695-2728-0
DOI :
10.1109/ICTAI.2006.41