Personalized recommendation via integrated diffusion on user-item-tag tripartite graphs |
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Authors: | Zi-Ke Zhang Yi-Cheng Zhang |
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Affiliation: | a Department of Physics, University of Fribourg,Chemin du Musée 3, 1700 Fribourg, Switzerland b Department of Modern Physics, University of Science and Technology of China, Hefei 230026, PR China |
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Abstract: | Personalized recommender systems are confronting great challenges of accuracy, diversification and novelty, especially when the data set is sparse and lacks accessorial information, such as user profiles, item attributes and explicit ratings. Collaborative tags contain rich information about personalized preferences and item contents, and are therefore potential to help in providing better recommendations. In this article, we propose a recommendation algorithm based on an integrated diffusion on user-item-tag tripartite graphs. We use three benchmark data sets, Del.icio.us, MovieLens and BibSonomy, to evaluate our algorithm. Experimental results demonstrate that the usage of tag information can significantly improve accuracy, diversification and novelty of recommendations. |
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Keywords: | Complex networks Personalized recommendation Diffusion Infophysics Folksonomy |
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