Title of article :
Hybrid Movie Recommender System based on Resource Allocation
Author/Authors :
Khalaji, Mostafa Faculty of Computer Engineering - K. N. Toosi University of Technology - Tehran, Iran , Dadkhah, Chitra Faculty of Computer Engineering - K. N. Toosi University of Technology - Tehran, Iran , Gharibshah, Joobin University of California – Riverside - CA
Pages :
9
From page :
17
To page :
25
Abstract :
Recommender Systems are inevitable to personalize user’s experiences on the Internet. They are using different approaches to recommend the Top-K items to users according to their preferences. Nowadays recommender systems have become one of the most important parts of large-scale data mining techniques. In this paper, we propose a Hybrid Movie Recommender System (HMRS) based on Resource Allocation to improve the accuracy of recommendation and solve the cold start problem for a new movie. HMRS-RA uses a self-organizing mapping neural network to clustering the users into N clusters. The users' preferences are different according to their age and gender, therefore HMRS-RA is a combination of a Content-Based Method for solving the cold start problem for a new movie and a Collaborative Filtering model besides the demographic information of users. The experimental results based on the MovieLens dataset show that the HMRS-RA increases the accuracy of recommendation compared to the state-of-art and similar works.
Keywords :
collaborative filtering , hybrid recommender system , self-organizing map , content-based method , resource allocation
Journal title :
The CSI Journal on Computer Science and Engineering (JCSE)
Serial Year :
2020
Record number :
2629264
Link To Document :
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