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CLUSTERING EFFECT OF USER-OBJECT BIPARTITE NETWORK ON PERSONALIZED RECOMMENDATION.

Authors :
GUO, QIANG
LIU, JIAN-GUO
Source :
International Journal of Modern Physics C: Computational Physics & Physical Computation; Jul2010, Vol. 21 Issue 7, p891-901, 11p, 1 Chart, 7 Graphs
Publication Year :
2010

Abstract

In this paper, the statistical property of the bipartite network, namely clustering coefficient C<subscript>4</subscript> is taken into account and be embedded into the collaborative filtering (CF) algorithm to improve the algorithmic accuracy and diversity. In the improved CF algorithm, the user similarity is defined by the mass diffusion process, and we argue that the object clustering C<subscript>4</subscript> of the bipartite network should be considered to improve the user similarity measurement. The statistical result shows that the clustering coefficient of the MovieLens data approximately has Poisson distribution. By considering the clustering effects of object nodes, the numerical simulation on a benchmark data set shows that the accuracy of the improved algorithm, measured by the average ranking score and precision, could be improved 15.3 and 13.0%, respectively, in the optimal case. In addition, numerical results show that the improved algorithm can provide more diverse recommendation results, for example, when the recommendation list contains 20 objects, the diversity, measured by the hamming distance, is improved by 28.7%. Since all of the real recommendation data are evolving with time, this work may shed some light on the adaptive recommendation algorithm according to the statistical properties of the user-object bipartite network. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01291831
Volume :
21
Issue :
7
Database :
Complementary Index
Journal :
International Journal of Modern Physics C: Computational Physics & Physical Computation
Publication Type :
Academic Journal
Accession number :
52357697
Full Text :
https://doi.org/10.1142/S0129183110015543