Title :
Probabilistic memory-based collaborative filtering
Author :
Yu, Kai ; Schwaighofer, Anton ; Tresp, Volker ; Xu, Xiaowei ; Kriegel, Hans-Peter
Author_Institution :
Inf. & Commun., Siemens Corporate Technol., Munich, Germany
Abstract :
Memory-based collaborative filtering (CF) has been studied extensively in the literature and has proven to be successful in various types of personalized recommender systems. In this paper, we develop a probabilistic framework for memory-based CF (PMCF). While this framework has clear links with classical memory-based CF, it allows us to find principled solutions to known problems of CF-based recommender systems. In particular, we show that a probabilistic active learning method can be used to actively query the user, thereby solving the "new user problem." Furthermore, the probabilistic framework allows us to reduce the computational cost of memory-based CF by working on a carefully selected subset of user profiles, while retaining high accuracy. We report experimental results based on two real-world data sets, which demonstrate that our proposed PMCF framework allows an accurate and efficient prediction of user preferences.
Keywords :
groupware; information filters; information retrieval; user interfaces; CF-based recommender systems; PMCF framework; active learning; classical memory-based CF; collaborative filtering; computational cost; data sampling; personalized recommender systems; probabilistic active learning method; probabilistic framework; probabilistic memory-based collaborative filtering; profile density model; real-world data sets; user preferences; user profiles; Books; Collaboration; Collaborative work; Computational efficiency; Filtering algorithms; Information filtering; Information filters; Learning systems; Predictive models; Recommender systems;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2004.1264822