HHMF: hidden hierarchical matrix factorization for recommender systems

被引:0
|
作者
Hui Li
Yu Liu
Yuqiu Qian
Nikos Mamoulis
Wenting Tu
David W. Cheung
机构
[1] Xiamen University,Fujian Key Laboratory of Sensing and Computing for Smart City, School of Information Science and Engineering
[2] The University of Hong Kong,Department of Computer Science
[3] University of Ioannina,Department of Computer Science and Engineering
[4] Shanghai University of Finance and Economics,School of Information Management and Engineering
来源
Data Mining and Knowledge Discovery | 2019年 / 33卷
关键词
Hierarchical matrix factorization; Collaborative filtering; Recommender systems;
D O I
暂无
中图分类号
学科分类号
摘要
Matrix factorization (MF) is one of the most powerful techniques used in recommender systems. MF models the (user, item) interactions behind historical explicit or implicit ratings. Standard MF does not capture the hierarchical structural correlations, such as publisher and advertiser in advertisement recommender systems, or the taxonomy (e.g., tracks, albums, artists, genres) in music recommender systems. There are a few hierarchical MF approaches, but they require the hierarchical structures to be known beforehand. In this paper, we propose a Hidden Hierarchical Matrix Factorization (HHMF) technique, which learns the hidden hierarchical structure from the user-item rating records. HHMF does not require the prior knowledge of hierarchical structure; hence, as opposed to existing hierarchical MF methods, HHMF can be applied when this information is either explicit or implicit. According to our extensive experiments, HHMF outperforms existing methods, demonstrating that the discovery of latent hierarchical structures indeed improves the quality of recommendation.
引用
收藏
页码:1548 / 1582
页数:34
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