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Personal Recommendation Via Heterogeneous Diffusion on Bipartite Network

机译:通过二元网络上的异质扩散进行个人推荐

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摘要

Recommender systems have proven to be an effective method to deal with the problem of information overload in finding interesting products. It is still a challenge to increase the accuracy and diversity of recommendation algorithms to fulfill users' preferences. To provide a better solution, in this paper, we propose a novel recommendation algorithm based on heterogeneous diffusion process on a user-object bipartite network. This algorithm generates personalized recommendation results on the basis of the physical dynamic feature of resources diffusion which is influenced by objects' degrees and users' interest degrees. Detailed numerical analysis on two benchmark datasets shows that the presented algorithm is of high accuracy, and also generates more diversity.
机译:推荐系统已被证明是解决寻找有趣产品时信息过多问题的有效方法。提高推荐算法的准确性和多样性以满足用户的偏好仍然是一个挑战。为了提供更好的解决方案,在本文中,我们提出了一种基于异构扩散过程的用户-对象双向网络上的新型推荐算法。该算法基于资源扩散的物理动态特征来生成个性化推荐结果,资源扩散的物理动态特征受对象程度和用户兴趣程度的影响。对两个基准数据集的详细数值分析表明,该算法具有较高的准确性,并且产生了更多的多样性。

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