1. 基于深度学习的欧几里得嵌入的推荐算法.
- Author
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余永红, 殷凯宇, 王 强, 张文彪, and 赵卫滨
- Subjects
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RECOMMENDER systems , *INFORMATION overload , *NONLINEAR functions , *ALGORITHMS , *DEEP learning - Abstract
Recommender systems can effectively reduce the information overload by recommending items that users may be interested in. Euclidean-embedding-based collaborative filtering methods map users and items to a unified latent space, which is one of the most important methods to build a recommender system. However, traditional Euclidean-embedding-based collaborative filtering methods only consider the low-order interaction between user latent feature vectors and item latent feature vectors, and cannot efficiently model the complex interaction behavior between users and items in the real world. In this paper, we propose a deep-Euclidean-embedding-based collaborative filtering algorithm, which utilizes deep learning technology to learn the high-order and nonlinear interaction function between user latent feature vectors and item latent feature vectors. This can model the complex interaction behavior between users and items. Experimental results on real-world datasets show that our proposed algorithm outperforms traditional collaborative filtering algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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