Title of article :
A Joint Web Resource Recommendation Method based on Category Tree and Associate Graph
Author/Authors :
Weng, Linkai Ministry of Education - Key Laboratory of Pervasive Computing, China , Weng, Linkai Technology Tsinghua University - Tsinghua National Laboratory for Information Science and Technology - Department of Computer Science, China , Zhang, Yaoxue Ministry of Education - Key Laboratory of Pervasive Computing, China , Zhang, Yaoxue Technology Tsinghua University - Tsinghua National Laboratory for Information Science and Technology - Department of Computer Science, China , Zhou, Yuezhi Ministry of Education - Key Laboratory of Pervasive Computing, China , Zhou, Yuezhi Technology Tsinghua University - Tsinghua National Laboratory for Information Science and Technology - Department of Computer Science, China , Yang, Laurence T. St .Francis Xavier University - Department of Computer Science, Canada , Tian, Pengwei Ministry of Education - Key Laboratory of Pervasive Computing, China , Tian, Pengwei Tsinghua University - Tsinghua National Laboratory for Information Science and Technology - Department of Computer Science Technology, China , Zhong, Ming Ministry of Education - Key Laboratory of Pervasive Computing, China , Zhong, Ming Tsinghua University - Tsinghua National Laboratory for Information Science and Technology - Department of Computer Science Technology, China
From page :
2387
To page :
2408
Abstract :
Personalized recommendation is valuable in various web applications, such as e-commerce, music sharing, and news releasing, etc. Most existing recommendation methods require users to register and provide their private information before gaining access to any services, whereas a majority of users are reluctant to do so, which greatly limits the range of application of such recommendation methods. In the non-register environments, the only available information is the content or attributes of resources and the click-through chains of user sessions, so that many recommendation methods fail to work effectively due to the rating sparsity [Adomavicius and Tuzhilin, 2005] and illegibility of user identity, collaborative filtering [Goldberg et al. 1992] is an example of this case. In this paper we propose a joint recommendation method combining together two approaches, namely the domain category tree and the associate graph, to make full use of all available information. Further, an associate graph propagation method is designed to improve the traditional associate filtering method by integrating additional graphical considerations into them. Experiment results show that our method outperforms either the single category tree approach or the single associate graph approach, and it can provide acceptable recommendation services even in the non-register environment.
Keywords :
category tree , graph propagation , personalized recommendation , personalized service
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2661484
Link To Document :
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