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A Clustering Approach for Collaborative Filtering Recommendation Using Social Network Analysis

Manh Cuong Pham, Matthias Jarke, Ralf Klamma, Yiwei Cao

2020Zenodo (CERN European Organization for Nuclear Research)211 citationsDOIOpen Access PDF

Abstract

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. Key Words: clustering, collaborative filtering,trust,socialnetworkanalysis Category: H.3.3, H.3.7

Topics & Concepts

Computer scienceCollaborative filteringCluster analysisRecommender systemExploitSimilarity (geometry)Set (abstract data type)Digital libraryInformation retrievalData miningComputationMachine learningArtificial intelligenceAlgorithmPoetryImage (mathematics)Programming languageArtComputer securityLiteratureRecommender Systems and TechniquesComplex Network Analysis TechniquesExpert finding and Q&A systems
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