Title of article
Personalized recommendation with adaptive mixture of markov models
Author/Authors
Yang Liu1، نويسنده , , Xiangji Huang2، نويسنده , , Aijun An3، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2007
Pages
20
From page
1851
To page
1870
Abstract
With more and more information available on the Internet, the task of making personalized recommendations to assist the userʹs navigation has become increasingly important. Considering there might be millions of users with different backgrounds accessing a Web site everyday, it is infeasible to build a separate recommendation system for each user. To address this problem, clustering techniques can first be employed to discover user groups. Then, user navigation patterns for each group can be discovered, to allow the adaptation of a Web site to the interest of each individual group. In this paper, we propose to model user access sequences as stochastic processes, and a mixture of Markov models based approach is taken to cluster users and to capture the sequential relationships inherent in user access histories. Several important issues that arise in constructing the Markov models are also addressed. The first issue lies in the complexity of the mixture of Markov models. To improve the efficiency of building/maintaining the mixture of Markov models, we develop a lightweight adapt-ive algorithm to update the model parameters without recomputing model parameters from scratch. The second issue concerns the proper selection of training data for building the mixture of Markov models. We investigate two different training data selection strategies and perform extensive experiments to compare their effectiveness on a real dataset that is generated by a Web-based knowledge management system, Livelink.
Journal title
Journal of the American Society for Information Science and Technology
Serial Year
2007
Journal title
Journal of the American Society for Information Science and Technology
Record number
993602
Link To Document