基于相似度的矩阵分解协同推荐

Xin Wang, Congfu Xu
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引用次数: 3

摘要

矩阵分解(MF)已被证明是一种非常成功的协同过滤(CF)技术,因此在当今的推荐系统中被广泛采用。然而,许多研究已经证明,仅MF不足以揭示用户和物品之间的局部关系,而邻域感知方法可以很好地学习到这些关系。结合这两种方法的优点,本文提出了一种新的模型,可以有效地将局部偏好信息集成到MF中。不同于现有的方法主要是通过潜在因素的相互作用来表示局部相似度,我们将邻域关系扩展到潜在因素及其评级偏好。首先,我们基于邻域信息建立用户和项目的聚类。其次,我们将聚类信息转换成两个表示(用户簇)-(项目)和(用户)-(项目簇)偏好的评级矩阵。第三,我们将生成的评级矩阵和局部潜在因素组合成一个单一的模型,称为基于相似度的矩阵分解(SBMF)。由于我们的模型可以探索相似信息的外部表示,因此它会产生更准确的推荐。在几个真实数据集上的实验结果表明,我们的SBMF优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SBMF: Similarity-Based Matrix Factorization for Collaborative Recommendation
Matrix factorization (MF) has been proved a very successful technique for Collaborative Filtering (CF), and hence has been widly adpoted in today's recommender systems. However, many studies have been proved that MF alone is poor to reveal the local relationships of users and items which can be learned well by the neighborhood-aware methods. To combine the merits of both approaches, in this paper, we propose a novel model which can effectively integrate the local preference information into MF. Different from various proposed methods which focus on representing the local similarity by the interactions of corresponding latent factors, we extend the neighborhood relationships to both latent factors and their rating preference. First, we establish clusters of users and items based on neighborhood information. Second, we transform the cluster information into two rating matrices which represent (user cluster) - (item) and (user) - (item cluster) preference. Third, we combine the generated rating matrices and the local latent factors into a single model, named Similarity-Based Matrix Factorization (SBMF). Since our model can explore the external representation of similarity information, it leads to more accurate recommendations. Experimental results on several real-world data sets show that our SBMF outperforms the state-of-the-art methods.
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