Physics – Data Analysis – Statistics and Probability
Scientific paper
2009-07-07
IJMPC 21(01) 2010 137-147
Physics
Data Analysis, Statistics and Probability
9 pages, 3 figures
Scientific paper
In this paper, by introducing a new user similarity index base on the diffusion process, we propose a modified collaborative filtering (MCF) algorithm, which has remarkably higher accuracy than the standard collaborative filtering. In the proposed algorithm, the degree correlation between users and objects is taken into account and embedded into the similarity index by a tunable parameter. The numerical simulation on a benchmark data set shows that the algorithmic accuracy of the MCF, measured by the average ranking score, is further improved by 18.19% in the optimal case. In addition, two significant criteria of algorithmic performance, diversity and popularity, are also taken into account. Numerical results show that the presented algorithm can provide more diverse and less popular recommendations, for example, when the recommendation list contains 10 objects, the diversity, measured by the hamming distance, is improved by 21.90%.
Che Hong-An
Liu Jian-Guo
Wang Bing-Hong
Xuan Zhao-Guo
Zhang Yi-Cheng
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