Title of article
A Clustering Approach for Collaborative Filtering Recommendation Using Social Network Analysis
Author/Authors
Pham, Manh Cuong RWTH Aachen University - Information Systems Database Technology , Cao, Yiwei RWTH Aachen University - Information Systems Database Technology, Germany , Klamma, Ralf RWTH Aachen University - Information Systems Database Technology, Germany , Jarke, Matthias RWTH Aachen University - Information Systems Database Technology, Germany
From page
583
To page
604
Abstract
Collaborative Filtering(CF) is a well-known technique in recommender systems. CF exploits relationships between users and recommends items to the active user according to the ratings of his/her neighbors. CF suffers from the data sparsity problem, where users only rate a small set of items. That makes the computation of similarity between users imprecise and consequently reduces the accuracy of CF algorithms. In this article, we propose a clustering approach based on the social information of users to derive the recommendations. We study the application of this approach in two application scenarios: academic venue recommendation based on collaboration information and trust-based recommendation. Using the data from DBLP digital library and Epinion, the evaluation shows that our clustering technique based CF performs better than traditional CF algorithms.
Keywords
clustering , collaborative filtering , trust , social network analysis
Journal title
Journal of J.UCS (Journal of Universal Computer Science)
Journal title
Journal of J.UCS (Journal of Universal Computer Science)
Record number
2662041
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