Title of article :
An Improved Recommender System Based on Forgetting Mechanism for User Interest- Drifting
Author/Authors :
Tavakolian، Rozita نويسنده Information Technology Engineering Department , , Hamidi Beheshti، Mohammad Taghi نويسنده Faculty of Electrical and Computer Engineering , , Moghaddam Charkari، Nasrollah نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی 16 سال 2012
Abstract :
Highly effective recommender systems may still face users’ interest drifting. One of the main strategies for
handling interest-drifting is forgetting mechanism. Current approaches based on forgetting mechanism have some
drawbacks: (i) Drifting times are not considered to be detected in user interest over time. (ii) They are not adaptive to
the evolving nature of user’s interest. Until now, there hasn’t been any study to overcome these problems. This paper
discusses the above drawbacks and presents a novel recommender system, named WmIDForg, using web usage
mining, web content mining techniques, and forgetting mechanism to address user interest-drift problem. We try to
detect evolving and time-variant patterns of usersʹ interest individually, and then dynamically use this information to
predict favorite items of the user better over time. The experimental results on EachMovie dataset demonstrate our
methodology increases recommendations precision 6.80% and 1.42% in comparison with available approaches with
and without interest-drifting respectively.
Journal title :
International Journal of Information and Communication Technology Research
Journal title :
International Journal of Information and Communication Technology Research