Graph neural networks in recommender systems

Xingyang He
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Abstract

As a way to alleviate the information overload problem arisen with the development of the internet, recommender systems receive a lot of attention from academia and industry. Due to its superiority in graph data, graph neural networks are widely adopted in recommender systems. This survey offers a comprehensive review of the latest research and innovative approaches in GNN-based recommender systems. This survey introduces a new taxonomy by the construction of GNN models and explores the challenges these models face. This paper also discusses new approaches, i.e., using social graphs and knowledge graphs as side information, and evaluates their strengths and limitations. Finally, this paper suggests some potential directions for future research in this field.
推荐系统中的图神经网络
作为缓解互联网发展带来的信息过载问题的一种方法,推荐系统受到学术界和工业界的广泛关注。由于图神经网络在图数据方面的优越性,它在推荐系统中被广泛采用。本调查全面回顾了基于图神经网络的推荐系统的最新研究和创新方法。本调查报告通过构建 GNN 模型介绍了一种新的分类方法,并探讨了这些模型所面临的挑战。本文还讨论了新方法,即使用社交图谱和知识图谱作为辅助信息,并评估了它们的优势和局限性。最后,本文提出了该领域未来研究的一些潜在方向。
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