Cross-Grained Neural Collaborative Filtering for Recommendation

IEEE ACCESS(2024)

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摘要
Collaborative Filtering has achieved great success in capturing users' preferences over items. However, existing techniques only consider limited collaborative signals, leading to unsatisfactory results when the user-item interactions are sparse. In this paper, we propose a Cross-grained Neural Collaborative Filtering model (CNCF), which enables recommendation more accurate and explainable. Specifically, we first construct four kinds of interaction graphs to model both fine-grained collaborative signals and coarse-grained collaborative signals, which can better compensate for the high sparsity of user-item interactions. Then we propose a fine-grained collaborative representation learning and design Light Attribute Prediction Networks ( $LAPN$ ) to capture the high-order attribute interactions and enhance the prediction accuracy. Finally, we propose a coarse-grained collaborative representation learning to represent user preferences based on diverse latent intent factors. The experiments demonstrate the high effectiveness of our proposed model.
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关键词
Collaboration,Representation learning,Collaborative filtering,Predictive models,Older adults,Matrix converters,Vectors,Recommender systems,Graph neural networks,collaborative representation learning,graph neural networks,recommender system
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