Collaborative filtering based on multi-channel diffusion |
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Authors: | Ming-Sheng Shang Tao Zhou Yi-Cheng Zhang |
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Affiliation: | a Lab of Information Economy and Internet Research, University of Electronic Science and Technology, 610054 Chengdu, PR China b Department of Physics, University of Fribourg, Chemin du Musée 3, CH-1700 Fribourg, Switzerland c Department of Modern Physics and Nonlinear Science Center, University of Science and Technology of China, Hefei 230026, PR China |
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Abstract: | In this paper, by applying a diffusion process, we propose a new index to quantify the similarity between two users in a user-object bipartite graph. To deal with the discrete ratings on objects, we use a multi-channel representation where each object is mapped to several channels with the number of channels being equal to the number of different ratings. Each channel represents a certain rating and a user having voted an object will be connected to the channel corresponding to the rating. Diffusion process taking place on such a user-channel bipartite graph gives a new similarity measure of user pairs, which is further demonstrated to be more accurate than the classical Pearson correlation coefficient under the standard collaborative filtering framework. |
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Keywords: | 89.75.Hc 87.23.Ge 05.70.Ln |
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