Title of article
Advances in Clustering Collaborative Filtering by means of Fuzzy C-means and trust
Author/Authors
Cosimo Birtolo، نويسنده , , Cosimo and Ronca، نويسنده , , Davide، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
13
From page
6997
To page
7009
Abstract
Several approaches for recommending products to the users are proposed in literature, and collaborative filtering has been proved to be one of the most successful techniques. Some issues related to the quality of recommendation and to computational aspects still arise (e.g., cold-start recommendations). In this paper, we investigate the application of model-based Collaborative Filtering (CF) techniques and in particular propose a clustering CF framework and two clustering CF algorithms: Item-based Fuzzy Clustering Collaborative Filtering (IFCCF) and Trust-aware Clustering Collaborative Filtering (TRACCF). We compare several approaches by means of Epinions, MovieLens, Jester, and Poste Italiane datasets (with real customers). Experimental results show an increased value of coverage of the recommendations provided by TRACCF without affecting recommendation quality. Moreover, trust information guarantees high level recommendation for different users.
Keywords
collaborative filtering , Recommendation system , Trust-aware recommendation system , Fuzzy clustering , Web Intelligence
Journal title
Expert Systems with Applications
Serial Year
2013
Journal title
Expert Systems with Applications
Record number
2354060
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