A Multi-clustering Hybrid Recommender System

Recommender systems have become an important research area because they have been a kind of Web intelligence techniques to search through the enormous volume of information available on the Internet. Collaborative filtering and content-based methods are two most commonly used approaches in most recommender systems. Although each of them has both advantages and disadvantages in providing high quality recommendations, a hybrid recommendation mechanism incorporating components from both of the methods would yield satisfactory results in many situations. In this paper, we present an elegant and effective framework for combining content and collaboration. Our approach uses a content-based predictor to enhance existing user data and item data, and then provides personalized suggestions through user-based collaborative filtering and item-based collaborative filtering. The proposed system clusters on content-based approach and collaborative approach then it contribute to the improvement of prediction quality of a hybrid recommender system.

[1]  Petra Perner,et al.  Data Mining - Concepts and Techniques , 2002, Künstliche Intell..

[2]  Peter G. Anick,et al.  A direct manipulation interface for boolean information retrieval via natural language query , 1989, SIGIR '90.

[3]  Mark Claypool,et al.  Combining Content-Based and Collaborative Filters in an Online Newspaper , 1999, SIGIR 1999.

[4]  Yoav Shoham,et al.  Fab: content-based, collaborative recommendation , 1997, CACM.

[5]  Pattie Maes,et al.  Social information filtering: algorithms for automating “word of mouth” , 1995, CHI '95.

[6]  David M. Pennock,et al.  Categories and Subject Descriptors , 2001 .

[7]  John Riedl,et al.  GroupLens: an open architecture for collaborative filtering of netnews , 1994, CSCW '94.

[8]  Michael W. Berry,et al.  Mining consumer product data via latent semantic indexing , 1999, Intell. Data Anal..

[9]  Barry Smyth,et al.  Personalized Electronic Program Guides for Digital TV , 2001, AI Mag..

[10]  Myoung-Ho Kim,et al.  Ranking Documents in Thesaurus-Based Boolean Retrieval Systems , 1994, Inf. Process. Manag..

[11]  Gerard Salton,et al.  Research and Development in Information Retrieval , 1982, Lecture Notes in Computer Science.

[12]  David Heckerman,et al.  Empirical Analysis of Predictive Algorithms for Collaborative Filtering , 1998, UAI.

[13]  Thomas Hofmann,et al.  Collaborative filtering via gaussian probabilistic latent semantic analysis , 2003, SIGIR.

[14]  Vijay V. Raghavan,et al.  Adaptive Concept-based Retrieval Using a Neural Network∗ , 2000 .

[15]  Ahmad M. Ahmad Wasfi Collecting user access patterns for building user profiles and collaborative filtering , 1998, IUI '99.

[16]  Hsinchun Chen,et al.  A graph-based recommender system for digital library , 2002, JCDL '02.

[17]  Gerard Salton,et al.  Term-Weighting Approaches in Automatic Text Retrieval , 1988, Inf. Process. Manag..

[18]  John Riedl,et al.  Item-based collaborative filtering recommendation algorithms , 2001, WWW '01.

[19]  William W. Cohen,et al.  Recommendation as Classification: Using Social and Content-Based Information in Recommendation , 1998, AAAI/IAAI.