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1.

Improving electronic customers' profile in recommender systems using data mining techniques Pages 449-456 Right click to download the paper Download PDF

Authors: Mohammad Reza Gholamian, Mohammad Fathian, Mohammad Julashokri, Ahmad Mehrbod

DOI: 10.5267/j.msl.2011.06.011

Keywords: Collaborative filtering, Customer preference, Customer profile, Group preferences, Recommender systems

Abstract:
Recommender systems are tools for realization one to one marketing. Recommender systems are systems, which attract, retain, and develop customers. Recommender systems use several ways to make recommendations. Two ways are using more than the others: collaborative filtering and content-based filtering. In this study, a recommender system model based on collaborative filtering has proposed. Proposed model was endeavored to improve the customer profile in collaborative systems to enhance the recommender system efficiency. This improvement was done using time context and group preferences. Experimental results show that the proposed model has a better recommendation performance than existing models.
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Journal: MSL | Year: 2011 | Volume: 1 | Issue: 4 | Views: 6252 | Reviews: 0

 

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