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arxiv: 2304.04994 · v1 · pith:JSF2JI6Y · submitted 2023-04-11 · cs.LG · cs.SI

Neural Multi-network Diffusion towards Social Recommendation

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classification cs.LG cs.SI
keywords recommendationsocialnegativeneuralexistinggnn-basedmodelmodels
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Graph Neural Networks (GNNs) have been widely applied on a variety of real-world applications, such as social recommendation. However, existing GNN-based models on social recommendation suffer from serious problems of generalization and oversmoothness, because of the underexplored negative sampling method and the direct implanting of the off-the-shelf GNN models. In this paper, we propose a succinct multi-network GNN-based neural model (NeMo) for social recommendation. Compared with the existing methods, the proposed model explores a generative negative sampling strategy, and leverages both the positive and negative user-item interactions for users' interest propagation. The experiments show that NeMo outperforms the state-of-the-art baselines on various real-world benchmark datasets (e.g., by up to 38.8% in terms of NDCG@15).

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