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Collaborative filtering via co-factorization of individuals and groups

机译:通过个体和群体的因式分解进行协同过滤

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Matrix factorization is one of the most successful collaborative filtering methods for recommender systems. Traditionally, matrix factorization only uses the observed user-item feedback information, which makes predictions on cold users/items difficult. In many applications, user/item content information are also available and they have been successfully used in content-based methods. In recent years, there are attempts to incorporate content information into matrix factorization. In particular, the Factorization Machine (FM) is one of the most notable examples. However, FM is a general factorization model that models interactions between all features into a latent feature space. In this paper, we propose a novel combination of tree-based feature group learning and matrix co-factorization that extends FM to recommender systems. Experimental results on a number of benchmark data sets show that the proposed algorithm outperforms state-of-the-art methods, particularly for predictions on cold users and cold items.
机译:矩阵分解是推荐系统最成功的协作过滤方法之一。传统上,矩阵分解仅使用观察到的用户项反馈信息,这使得难以预测冷用户/项。在许多应用程序中,用户/项目内容信息也是可用的,它们已成功用于基于内容的方法中。近年来,尝试将内容信息合并到矩阵分解中。特别地,分解因数(FM)是最著名的示例之一。但是,FM是将所有要素之间的交互建模为潜在要素空间的通用分解模型。在本文中,我们提出了一种基于树的特征组学习和矩阵共分解的新颖组合,将FM扩展到了推荐系统。在多个基准数据集上的实验结果表明,该算法优于最新方法,特别是对于冷用户和冷物品的预测。

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