异构网络推荐中兴趣扩散的无偏用户模型

Yin Fengjing, Zhang Xin, Zhang Xiaoyu
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引用次数: 0

摘要

兴趣扩散在二部网络中被证明是有效的人格推荐。用户节点和项目节点组成了一个异构的二部网络。将用户对物品的态度作为兴趣资源,在异构网络中沿链接进行分配,可以向目标用户推荐最可能感兴趣的物品。然而,它对用户兴趣建模和量化兴趣的方式导致算法存在一些偏差。例如,它将积极态度引入兴趣扩散过程,但没有看到消极态度也反映了用户的喜好,应该引入计算。为了克服这些缺点,本文提出了一个无偏用户兴趣模型。首先,无偏模型将积极态度和消极态度都考虑到用户兴趣中,以消除负反馈歧视。其次,从统计优化的角度,采用了新的利益划分标准。最后,在对利率进行量化和加权时,采用对称公式对正利率和负利率一视同仁,降低了评级偏差。在实际数据上进行的大量实验验证了该模型的优势,即使后续扩散过程与基线算法相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Unbiased User Model for Interest Diffusion in the Heterogeneous Network Recommendation
Interest diffusion in a bipartite network has been verified effective for personality recommendation. User nodes and item nodes compose a heterogeneous bipartite network. Treating user attitude toward items as interest resource and allocating it in the heterogeneous network along the linkage make it possible to recommend the most likely interested items to target users. However, the way it models user interest and quantizes interest lead some bias into the algorithm. Such as, it adopts the positive attitude into the interest diffusion process but without seeing that negative attitude also reflect user flavor and should be introduced into the computation. To overcome the drawbacks, this paper proposed an unbiased user interest model. Firstly, the unbiased model considers both positive and negative attitudes into user interest to eliminate the negative feedback discrimination. Secondly, it adopts a new criterion to divide interest from a perspective of statistic optimization. Last, it treats positive interest and negative interest equally to lower the rating bias by a symmetric formula when quantizing and weighting interest. Extensive experiments conducted on real data validate the advantage of the proposed model even with the same following diffusion process as the baseline algorithm.
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