Learning hierarchical category influence on both users and items for effective recommendation

Zhu Sun, G. Guo, Jie Zhang
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引用次数: 3

Abstract

Item category has proven to be useful additional information to address the data sparsity and cold start problems in recommender systems. Although categories have been well studied in which they are independent and structured in a flat form, in many real applications, item category is often organized in a richer knowledge structure - category hierarchy, to reflect the inherent correlations among different categories. In this paper, we propose a novel latent factor model by exploiting category hierarchy from the perspectives of both users and items for effective recommendation. Specifically, a user can be influenced by her preferred categories in the hierarchy. Similarly, an item can be characterized by the associated categories in the hierarchy. We incorporate the influence that different categories have towards a user and an item in the hierarchical structure. Experimental results on two real-world data sets demonstrate that our method consistently outperforms the state-of-the-art category-aware recommendation algorithms.
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学习层次分类对用户和商品的影响,进行有效推荐
项目类别已被证明是解决推荐系统中数据稀疏和冷启动问题的有用附加信息。尽管人们已经对类别进行了很好的研究,在这些类别中,它们是独立的,并以扁平的形式组织起来,但在许多实际应用中,项目类别往往被组织成一个更丰富的知识结构——类别层次结构,以反映不同类别之间的内在相关性。在本文中,我们提出了一种新的潜在因素模型,从用户和物品的角度出发,利用类别层次进行有效推荐。具体来说,用户可能会受到其在层次结构中喜欢的类别的影响。类似地,一个项目可以通过层次结构中的相关类别来表征。我们在层次结构中结合了不同类别对用户和项目的影响。在两个真实数据集上的实验结果表明,我们的方法始终优于最先进的类别感知推荐算法。
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