使用混合专家的混合协同过滤算法

Xiaoyuan Su, R. Greiner, T. Khoshgoftaar, Xingquan Zhu
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引用次数: 49

摘要

协同过滤(CF)是最成功的推荐方法之一。在本文中,我们提出了两种混合CF算法,顺序混合CF和联合混合CF,每一种算法都结合多位专家的建议进行有效推荐。这些建议的混合CF模型在数据非常稀疏的常见情况下工作得特别好。通过组合多个专家组成混合CF,我们的系统能够处理稀疏数据,获得满意的性能。实证研究表明,我们的算法优于同类算法,如基于内存的、纯基于模型的、纯基于内容的CF算法,以及内容增强的CF(一种代表性的混合CF算法),特别是在底层数据非常稀疏的情况下。
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Hybrid Collaborative Filtering Algorithms Using a Mixture of Experts
Collaborative filtering (CF) is one of the most successful approaches for recommendation. In this paper, we propose two hybrid CF algorithms, sequential mixture CF and joint mixture CF, each combining advice from multiple experts for effective recommendation. These proposed hybrid CF models work particularly well in the common situation when data are very sparse. By combining multiple experts to form a mixture CF, our systems are able to cope with sparse data to obtain satisfactory performance. Empirical studies show that our algorithms outperform their peers, such as memory-based, pure model-based, pure content-based CF algorithms, and the content- boosted CF (a representative hybrid CF algorithm), especially when the underlying data are very sparse.
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