1. 基于邻接矩阵优化和负采样的图卷积推荐.
- Author
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王慧, 梁兴柱, 张绪, and 夏晨星
- Subjects
- *
RECOMMENDER systems , *ATTENUATION coefficients , *ALGORITHMS , *MATRICES (Mathematics) - Abstract
In order to alleviate the problems of randomly initializing users and items, ignoring the importance of different convolutional layers, and having too few negative samples with low quality in recommendation systems, this paper proposed AMONS. Specifically, the algorithm used adjacency matrix for embedding optimization of users and items, and introduced layer attenuation coefficients in convolutional layer aggregation to distinguish the importance of different layers. Next, it generated a filtered set of negative samples for each pair of user positive samples, allowing the model to fully utilize the historical interaction data between users and items, and better learn user preferences. The experiments were conducted extensively on the Gowalla and Amazon-Books public datasets. Compared to related methods, AMONS achieves the best performance, demonstrating the effectiveness of the method. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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