Research of information recommendation system based on reading behavior

In modern knowledge explosion society, Humanspsila ability to find the information they desire grows more slowly than the rate at which the new information becomes available. Recommendation system can reduce information overload and provide appropriate content to targeted user. This paper proposes a new recommending technique based on mining the userpsilas reading behavior, computing the user profile through 5W1H scheme. By comparing the user profile and the information representation, we can provide the customized content in suitable time to satisfy the userpsilas personalized requirement. For performance evaluation, we implement the technology to make experiments on real information and people. The results show that our technology and approach can acquire the userpsilas requirement, and recommend suitable information they really need.

[1]  Gang Li,et al.  An efficient recommendation method based on server Web-logs , 2004, The Fourth International Conference onComputer and Information Technology, 2004. CIT '04..

[2]  Paul Resnick,et al.  Recommender systems , 1997, CACM.

[3]  Pasquale Lops,et al.  WordNet-based user profiles for neighborhood formation in hybrid recommender systems , 2005, Fifth International Conference on Hybrid Intelligent Systems (HIS'05).

[4]  Nicholas J. Belkin,et al.  Information filtering and information retrieval: two sides of the same coin? , 1992, CACM.

[5]  Janusz Sobecki Implementations of Web-based Recommender Systems Using Hybrid Methods , 2006, Int. J. Comput. Sci. Appl..

[6]  Victoria S. Uren,et al.  Extracting significant words from corpora for ontology extraction , 2005, K-CAP '05.

[7]  T. Terano,et al.  Finding users' latent interests for recommendation by learning classifier systems , 2000, KES'2000. Fourth International Conference on Knowledge-Based Intelligent Engineering Systems and Allied Technologies. Proceedings (Cat. No.00TH8516).

[8]  Christiane Fellbaum,et al.  Book Reviews: WordNet: An Electronic Lexical Database , 1999, CL.

[9]  Sung Ho Ha Digital Content Recommender on the Internet , 2006, IEEE Intell. Syst..

[10]  Andrew Kusiak,et al.  XML-based modeling of corporate memory , 2005, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[11]  Josep Lluís de la Rosa i Esteva,et al.  A Taxonomy of Recommender Agents on the Internet , 2003, Artificial Intelligence Review.

[12]  Qing Li,et al.  A new approach for combining content-based and collaborative filters , 2006, Journal of Intelligent Information Systems.

[13]  Stuart E. Middleton,et al.  Ontological user profiling in recommender systems , 2004, TOIS.

[14]  Nicholas R. Jennings,et al.  Learning users' interests by quality classification in market-based recommender systems , 2005, IEEE Transactions on Knowledge and Data Engineering.

[15]  Arbee L. P. Chen,et al.  Enabling personalized recommendation on the Web based on user interests and behaviors , 2001, Proceedings Eleventh International Workshop on Research Issues in Data Engineering. Document Management for Data Intensive Business and Scientific Applications. RIDE 2001.

[16]  Lv Xue-qiang Advertisement-Promotion Research Based on the Content of Webpage , 2007 .

[17]  John Riedl,et al.  Is seeing believing?: how recommender system interfaces affect users' opinions , 2003, CHI '03.