Collaborative similarity embedding for recommender systems

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Abstract

We present collaborative similarity embedding (CSE), a unified framework that exploits comprehensive collaborative relations available in a user-item bipartite graph for representation learning and recommendation. In the proposed framework, we differentiate two types of proximity relations: direct proximity and k-th order neighborhood proximity. While learning from the former exploits direct user-item associations observable from the graph, learning from the latter makes use of implicit associations such as user-user similarities and item-item similarities, which can provide valuable information especially when the graph is sparse. Moreover, for improving scalability and flexibility, we propose a sampling technique that is specifically designed to capture the two types of proximity relations. Extensive experiments on eight benchmark datasets show that CSE yields significantly better performance than state-of-the-art recommendation methods.

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Chen, C. M., Tsai, M. F., Wang, C. J., & Yang, Y. H. (2019). Collaborative similarity embedding for recommender systems. In The Web Conference 2019 - Proceedings of the World Wide Web Conference, WWW 2019 (pp. 2637–2643). Association for Computing Machinery, Inc. https://doi.org/10.1145/3308558.3313493

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