An Interest Feature Spatial Approach for Personalized Recommendation

Article Preview

Abstract:

To expand user's actions of personalized recommendation, this paper introduces an Interest Feature Spatial based Recommendation Model. This model combines both collection behavior data of network users and content data of web pages located by URL address. The main content includes: (1) Proposing the construction of interest feature spatial based on SHG-Tree; (2) Proposing the formula to calculate interest feature values of network resources; (3) Proposing four interest match algorithms along with six types of personalized recommendation schemes. Experiments show that the recommendation service can achieve millisecond responding, the precision, especially recall metric is better than item-based collaborative filtering algorithm.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

2219-2224

Citation:

Online since:

June 2011

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2011 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Lin W, Alvarez S A, Ruiz C. Efficient adaptive-support associations rule mining for recommender system [J]. Data Ming and Knowledge Discovery, 2002, 6(1): 83-105.

Google Scholar

[2] Mobster, B., Dai, H., & Nakagawa, M. (2001). Effective personalization based on association rule discovery from web usage data. Proceedings of the third international workshop on web information and data management (pp.9-15).

DOI: 10.1145/502932.502935

Google Scholar

[3] C. Base, H. Hirsh, and W. W. Cohen. Recommendation as classification: Using social and content-based information in recommendation. In Proceedings of the Fifteenth National Conference on Artificial Intelligence, pages 714-720, (1998).

Google Scholar

[4] Liu Y T, Liu Y M et al.: SHG-Tree: An Efficient Index Structure of Spatial Database. Journal of Frontiers of Computer Science and Technology, Mar, 2009: 68-90.

Google Scholar

[5] Nichols, D.M. (1997). Implicit rating and filtering. Proceedings of the fifth workshop on filtering and collaborative filtering (pp.31-36).

Google Scholar

[6] Riecken, D. (2000). Personalized views of personalization. Communications of the ACM, 43(8), 27-28.

Google Scholar

[7] Konstan, J., Miller, B., Maltz, D., Herlocker, J., Gordon, L., and Riedl, J. (1997). GroupLens: Applying Collaborative Filtering to Usernet News. Communications of the ACM, 40(3), pp.77-87.

DOI: 10.1145/245108.245126

Google Scholar

[8] Wang, F. H., & Thao, S.M. (2003). A study on personalized Web browsing recommendation based on data mining and collaborative filtering technology. Proceedings of national computer symposium, Taiwan (pp.18-25).

Google Scholar

[9] Badrul Sarwar, George Karypis et al. Item-based Collaborative Filtering Recommendation Algorithms. WWW10, May 1-5, 2001, Hong Kong. ACM 1-58113-348-0/01/0005.

Google Scholar

[10] Breese, J.S., Heckerman, D., and Kadie, C. (1998). Empirical Analysis of Predictive Algorithm for Collaborative Filtering. In Proceeding of the 14th Conference on Uncertainty in Artificial Intelligence, pp.43-52.

Google Scholar