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HeteroGraphRec: A heterogeneous graph-based neural networks for social recommendations

机译:HeterAgnREC:基于异质图形的神经网络,用于社会建议

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Recommender systems in social networks are widely used for connecting users to their desired items from a vast catalog of available items. Learning the user's preferences from all the possible sources of information in an extensive, multi-dimensional social network is one of the main challenges when building such recommenders. Graph Neural Networks have been gaining momentum in recent years and have been successful when dealing with large-scale graphs, and they can be applied to social networks with some modifications. In this research, we propose the HeteroGraphRec, which provides social recommendations by modeling the social network as a heterogeneous graph and utilizing GNNs with attention mechanisms to intelligently aggregate information from all sources when building the connections between user to user, item to item, and user to item. The HeteroGraphRec can gather information about the user's connections (friendships, trust network), item interaction history, and item similarities to attain rich information about the preferences. To evaluate the HeteroGraphRec, we use three real-world benchmark datasets and demonstrate that the proposed HeteroGraphRec achieves superior performance compared to ten other state-of-the-art social recommender systems. We extensively analyze the HeteroGraphRec model to illustrate the effectiveness by changing the embedding dimensions of the users and items. We also show the interpretability of our model by examining each component of the model's contribution. The results show that the HeteroGraphRec is robust and can consistently perform better than the baseline systems. (C) 2021 Elsevier B.V. All rights reserved.
机译:社交网络中的推荐系统广泛用于将用户从可用物品的广泛目录中连接到所需的项目。从广泛的多维社交网络中学习用户的所有可能的信息来源的偏好是建立此类推荐时的主要挑战之一。图表神经网络近年来一直在获得动力,并且在处理大规模图表时一直成功,它们可以应用于社交网络,并进行一些修改。在这项研究中,我们提出了通过将社交网络作为异构图形建模并利用GNN来提供社会建议,并利用注意机制来智能地从所有来源智能地聚合信息,当用户到项目到项目和用户的项目到项目。 “异议系统”可以收集有关用户连接(友谊,信任网络),项目交互历史记录和项目相似性的信息,以获得有关偏好的丰富信息。为了评估异议系统,我们使用三个现实世界的基准数据集,并证明所提出的异质REC与其他十个其他最先进的社会推荐系统相比实现了卓越的性能。我们广泛地分析异素批量模型以通过改变用户和项目的嵌入方面来说明效果。我们还通过检查模型的贡献的每个组成部分来展示我们模型的可解释性。结果表明,异签入仪式是稳健的,并且可以一直比基线系统更好。 (c)2021 elestvier b.v.保留所有权利。

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