Preference and Concurrence Aware Bayesian Graph Neural Networks for
Recommender Systems
- URL: http://arxiv.org/abs/2312.11486v2
- Date: Mon, 22 Jan 2024 19:57:27 GMT
- Title: Preference and Concurrence Aware Bayesian Graph Neural Networks for
Recommender Systems
- Authors: Hongjian Gu, Yaochen Hu, Yingxue Zhang
- Abstract summary: Graph-based collaborative filtering methods have prevailing performance for recommender systems.
We propose an efficient generative model that jointly considers the preferences of users, the concurrence of items and some important graph structure information.
- Score: 5.465420718331109
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Graph-based collaborative filtering methods have prevailing performance for
recommender systems since they can capture high-order information between users
and items, in which the graphs are constructed from the observed user-item
interactions that might miss links or contain spurious positive interactions in
industrial scenarios. The Bayesian Graph Neural Network framework approaches
this issue with generative models for the interaction graphs. The critical
problem is to devise a proper family of graph generative models tailored to
recommender systems. We propose an efficient generative model that jointly
considers the preferences of users, the concurrence of items and some important
graph structure information. Experiments on four popular benchmark datasets
demonstrate the effectiveness of our proposed graph generative methods for
recommender systems.
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