Browse > Article
http://dx.doi.org/10.5391/IJFIS.2006.6.2.110

Collaborative filtering based Context Information for Real-time Recommendation Service in Ubiquitous Computing  

Lee Se-ll (Dept. of Computer Engineering, Kongju National University)
Lee Sang-Yong (Division of Computer Science & Engineering, Kongju National University)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.6, no.2, 2006 , pp. 110-115 More about this Journal
Abstract
In pure P2P environment, it is possible to provide service by using a little real-time information without using accumulated information. But in case of using only a little information that was locally collected, quality of recommendation service can be fallen-off. Therefore, it is necessary to study a method to improve qualify of recommendation service by using users' context information. But because a great volume of users' context information can be recognized in a moment, there can be a scalability problem and there are limitations in supporting differentiated services according to fields and items. In this paper, we solved the scalability problem by clustering context information per each service field and classifying it per each user, using SOM. In addition, we could recommend proper services for users by quantifying the context information of the users belonging to the similar classification to the service requester among classified data and then using collaborative filtering.
Keywords
Collaborative Filtering; Context; Recommendation System; Pure P2P; SOM;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 S.Jang, W.Woo, 'ubi-UCAM: A Unified Context-Aware Application Model.', LNAI(Context03), pp.178-189, 2003
2 Hee-Seung Kim, Pattern Recognition, Saing-Reung, pp.323- 346, 1993
3 Eung-Gon Kim, Dong-Hyun Kim, Sung-Ju Lee, 'A Study on P2P Business Model Analysis', Korea Fuzzy Logic and Intelligent Systems Society, Vol.11, NO.01, pp.203-206, 2001
4 T. Kohonen, Self-Organizing Maps, Springer-Verlag, Berlin, 1995
5 N.Good, B. Schafer, J.Konstan, A. Borchers, B.Sarwar, J. Riedl, 'Combining Collaborative filtering with personal Agents for Better Recommendation', AAAI/IAAI, pp.439-446, 1999
6 B. M. Sarwar, J. A. Konstan, Al Borches, J. Herlocker, B. Miller, and J. Riedl. 'Using Filtering Agents to Improve Prediction Quality in the GroupLens Research Collaborative Filtering System', Proceedings of the 1998 Conference on Computer Supported Cooperative Work, 1998
7 Mi-Sug Ku, Jeong-Hee Hwang, Nam-Kyu Choi, Doo Young Jung, Keun Ho Ryu, 'Context-based Incremental Preference Analysis Method in Ubiquitous Commerce', Korea Information Processing Society, Vol.11-D, No. 07, pp.1417-1426, 2004.12
8 Se-Il Lee, Sang-Yong Lee, 'Collaborative Filtering Method Using Context of P2P Mobile Agents', Korea Fuzzy Logic and Intelligent Systems Society, Vol.15, No.5, pp.643-648, 2005   과학기술학회마을   DOI   ScienceOn
9 D.Salber, A.K.Dey and G.D.Abowd, 'The Context Toolkit:Aiding the Development of Context-Aware Application', In the Workshop on Software Engineering for Wearable and Pervasive Computing (Limerick Ireland), June, 2000