Title of article :
Enhancing memory-based collaborative filtering for group recommender systems
Author/Authors :
Ghazarian، نويسنده , , Sarik and Nematbakhsh، نويسنده , , Mohammad Ali، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2015
Pages :
12
From page :
3801
To page :
3812
Abstract :
Memory-based collaborating filtering techniques are widely used in recommender systems. They are based on full initial ratings in a user-item matrix. However, most of the time in group recommender systems, this matrix is sparse and users’ preferences are unknown. This deficiency may make memory-based collaborative filtering unsuitable for group recommender systems. This paper, improves memory-based techniques for group recommendation systems by resolving the data sparsity problem. The core of the proposed method is based on a support vector machine learning model that computes similarities between items. This method employs calculated similarities and enhances basic memory-based techniques. Experiments demonstrate that the proposed method overcomes the memory-based techniques. It also indicates that the presented work outperforms the latent factor approach, which is very efficient in sparse conditions. Finally, it is indicated that the proposed method gives a better performance than existing approaches on generating group recommendations.
Keywords :
Group recommendation system , Sparsity Problem , User-based approach , Item-based approach , Collaborative filtering technique
Journal title :
Expert Systems with Applications
Serial Year :
2015
Journal title :
Expert Systems with Applications
Record number :
2355854
Link To Document :
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