基于明星用户的协同过滤

Qiang Liu, Bingfei Cheng, Congfu Xu
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引用次数: 7

摘要

基于邻域的协同过滤算法作为目前最流行的推荐系统技术之一,因其简单、合理、稳定等优点而备受青睐。然而,当面对大规模、稀疏或受噪声影响的数据时,最近邻协同过滤的性能不是很好,因为计算用户或项目对之间的相似度成本很高,并且相似度的准确性很容易受到噪声和稀疏性的影响。本文提出了一种基于用户星的协同过滤方法。我们提出了一种方法,不是将每个用户都视为相同的,而是生成少数用户作为最可靠的\emph{星级用户},然后根据星级用户的评分对一般人群进行预测。在两个不同数据集上的实证研究表明,我们的方法在效率和准确性方面都优于传统的基于邻域的协同过滤算法。
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Collaborative Filtering Based on Star Users
As one of the most popular recommender system technologies, neighborhood-based collaborative filtering algorithm has obtained great favor due to its simplicity, justifiability, and stability. However, when faced with large-scale, sparse, or noise affected data, nearest-neighbor collaborative filtering performs not so well, as the calculation of similarity between user or item pairs is costly and the accuracy of similarity can be easily affected by noise and sparsity. In this paper, we present a novel collaborative filtering method based on user stars. Instead of treating every user as the same, we propose a method to generate a small number of users as the most reliable \emph{star users} and then produce predictions for the general population based on star users' ratings. Empirical studies on two different datasets suggest that our method outperforms traditional neighborhood-based collaborative filtering algorithm in terms of both efficiency and accuracy.
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