一种提高基于用户的协同过滤性能的有效相似度度量

Rabi Shaw, Dibyam Kumar Agrawal, Bidyut Kr. Patra
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引用次数: 2

摘要

协同过滤(CF)已成为推荐系统中最强大的方法之一。基于邻居的CF使用相似性度量来识别活跃用户的邻居,这些邻居在个性化推荐中起着至关重要的作用。与使用Pearson相关系数(PCC)、邻近影响流行度(PIP)等传统度量方法的CF方法相比,最近引入的基于启发式相似性度量(NHSM)的CF方法表现良好。但是,NHSM没有适当地规范化,在特定场景中可能会误导查找邻居。在本文中,我们提出了一个改进的NHSM相似度度量,以克服NHSM的不足。我们提出利用双曲三角函数对NHSM各分量进行归一化。利用相对差异(RD)来解决NSHM的误导问题。实验结果表明,改进的基于NHSM (i-NHSM)的CF优于基于NHSM的CF。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Similarity Measure for Improving Performance of User Based Collaborative Filtering
Collaborating filtering (CF) has become one of the most powerful approaches in the recommender system. Neighborhood-based CF uses a similarity measure to identity neighbors of an active user, and these neighbors play an essential role in the personalized recommendation. Recently introduced new heuristic similarity measure (NHSM) based CF is found to be performing well compared to the CF approaches, which use traditional measures like Pearson correlation coefficient (PCC), proximity impact popularity (PIP), etc. However, NHSM is not appropriately normalized, and it may mislead in finding neighbors in specific scenarios. In this paper, we propose an improved NHSM similarity measure to excel in the recommendation by overcoming the shortfall of NHSM. We propose to utilize hyperbolic trigonometric function for the normalization of each component of NHSM. Relative difference (RD) is exploited to address the misleading problem of NSHM. Experimental results demonstrate that our improved NHSM (i-NHSM) based CF outperforms NHSM based CF.
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