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Erschienen in: World Wide Web 4/2023

07.09.2022

Leveraging the fine-grained user preferences with graph neural networks for recommendation

verfasst von: Gang Wang, Hanru Wang, Jing Liu, Ying Yang

Erschienen in: World Wide Web | Ausgabe 4/2023

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Abstract

With the explosion of information, recommendation systems have become important for users to find their interested information. Existing recommendation methods mainly utilize user historical interaction with items or user ratings to capture user past preferences. However, there is ignorance of various personalized reasons for users preferring an item, in which the reasons always dominate users’ preference strengths on the item. In addition, the linear nature of traditional recommendation methods makes them less effective in dealing with complex data. With the development of deep learning methods, graph neural networks provide an unprecedented opportunity for recommendations, since the user-item interactions can be naturally represented as a graph and the method can extract high-order complex relationships between users and items. In this paper, we propose a novel method leveraging the FIne-Grained user preferences with Graph Neural Networks (FigGNN) for recommendation to tackle these issues. More specifically, user-item interactions with user annotated tags and user ratings are constructed as a graph. In the process of graph message propagation, the user annotated tags are incorporated for understanding user preference reasons on items, and heterogeneous user rating levels are utilized for recognizing user preference strengths on items. Experiments have been conducted on the MovieLens dataset and the results show a superior performance of FigGNN over baselines in terms of precision and recall, which demonstrates the effectiveness of the proposed method.

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Metadaten
Titel
Leveraging the fine-grained user preferences with graph neural networks for recommendation
verfasst von
Gang Wang
Hanru Wang
Jing Liu
Ying Yang
Publikationsdatum
07.09.2022
Verlag
Springer US
Erschienen in
World Wide Web / Ausgabe 4/2023
Print ISSN: 1386-145X
Elektronische ISSN: 1573-1413
DOI
https://doi.org/10.1007/s11280-022-01099-y

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