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Erschienen in: International Journal of Machine Learning and Cybernetics 6/2023

23.12.2022 | Original Article

GCN recommendation model based on the fusion of dynamic multiple-view latent interest topics

verfasst von: Feng Liu, Jian Liao, Jianxing Zheng, Suge Wang, Deyu Li, Xin Wang

Erschienen in: International Journal of Machine Learning and Cybernetics | Ausgabe 6/2023

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Abstract

Graph neural network-based representation models have shown extraordinary potential in numerous recommender system applications. Previous studies mainly considered high-order connectivity information in a single view from an interaction graph but ignored the individualized information of the users or items, making them vulnerable to over-smoothing problems. In this study, we proposed a dynamic multi-view fusion-based graph convolution network model for recommendation systems. Multiple views were generated for learning on the basis of latent user interest topics from the decomposed matrix, and a continuous awareness mechanism was proposed to maintain the model’s focus on the individualized features of the nodes. During the graph learning process, a dynamic aggregation mechanism was designed to adjust the fusion weight of different propagation layers. Lastly, the different features from multiple views were dynamically fused through an attention mechanism and a principal component control mechanism to predict the similarities between users and items. Experimental results of three popular datasets of recommendation systems demonstrated that our method could effectively alleviate the over-smoothing problem and achieved better performance than four state-of-the-art baselines.

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Metadaten
Titel
GCN recommendation model based on the fusion of dynamic multiple-view latent interest topics
verfasst von
Feng Liu
Jian Liao
Jianxing Zheng
Suge Wang
Deyu Li
Xin Wang
Publikationsdatum
23.12.2022
Verlag
Springer Berlin Heidelberg
Erschienen in
International Journal of Machine Learning and Cybernetics / Ausgabe 6/2023
Print ISSN: 1868-8071
Elektronische ISSN: 1868-808X
DOI
https://doi.org/10.1007/s13042-022-01743-z

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