基于标签矩阵转移的跨领域推荐

Zhou Fang, Sheng Gao, B. Li, Juncen Li, J. Liao
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引用次数: 20

摘要

数据稀疏性是基于协同过滤的推荐系统中最具挑战性的问题之一。利用社会标签信息正在成为缓解这一问题和提高性能的一种流行方法。为此,在最近的推荐方法中,经常考虑用户/项目与标签之间的关系,然而,不同项目域的标签之间的相关性总是被忽略。为此,本文提出了一种通过传递标签共现矩阵信息来挖掘多域评分模式的新方法,该方法可用于揭示共同的用户模式。通过大量的实验,我们证明了该方法在跨领域信息推荐中的有效性。
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Cross-Domain Recommendation via Tag Matrix Transfer
Data sparseness is one of the most challenging problems in collaborative filtering(CF) based recommendation systems. Exploiting social tag information is becoming a popular way to alleviate the problem and improve the performance. To this end, in recent recommendation methods the relationships between users/items and tags are often taken into consideration, however, the correlations among tags from different itemdomains are always ignored. For that, in this paper we propose a novel way to exploit the rating patterns across multiple domains by transferring the tag co-occurrence matrix information, which could be used for revealing common user pattern. With extensive experiments we demonstrate the effectiveness of our approach for the cross-domain information recommendation.
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