论文标题

联合图神经网络:概述,技术和挑战

Federated Graph Neural Networks: Overview, Techniques and Challenges

论文作者

Liu, Rui, Xing, Pengwei, Deng, Zichao, Li, Anran, Guan, Cuntai, Yu, Han

论文摘要

据近年来,图形神经网络(GNN)在实用应用中广泛发现了图形数据的能力,近年来吸引了大量的研究关注。随着社会越来越关注对数据隐私保护的需求,GNNS面临适应这一新常态的需求。此外,由于联合学习(FL)中的客户可能会有关系,因此需要更强大的工具来利用这种隐式信息来提高性能。这导致了联邦图神经网络(FedGnns)的新兴研究领域的快速发展。这个有希望的跨学科领域对于感兴趣的研究人员要掌握了极大的挑战。缺乏对该主题的有见地的调查进一步加剧了入口难度。在本文中,我们通过对这个新兴领域进行全面调查来弥合这一差距。我们提出了FedGnns文献的二维分类法:1)主要分类法通过分析GNNS如何增强FL培训以及FL培训如何有助于GNNS培训,以及2)辅助分类法提供了与Howgnns跨越Heterogengeny comles cents of fl tl countle countle countle countle counter,从而为GNNS如何增强FL培训以及如何帮助GNNS培训,从而为GNNS和FL的整合提供了清晰的观点。通过讨论现有作品的关键思想,挑战和局限性,我们设想了未来的研究方向,这些方向可以帮助建立更健壮,可以解释,高效,公平,归纳和全面的联邦。

With its capability to deal with graph data, which is widely found in practical applications, graph neural networks (GNNs) have attracted significant research attention in recent years. As societies become increasingly concerned with the need for data privacy protection, GNNs face the need to adapt to this new normal. Besides, as clients in Federated Learning (FL) may have relationships, more powerful tools are required to utilize such implicit information to boost performance. This has led to the rapid development of the emerging research field of federated graph neural networks (FedGNNs). This promising interdisciplinary field is highly challenging for interested researchers to grasp. The lack of an insightful survey on this topic further exacerbates the entry difficulty. In this paper, we bridge this gap by offering a comprehensive survey of this emerging field. We propose a 2-dimensional taxonomy of the FedGNNs literature: 1) the main taxonomy provides a clear perspective on the integration of GNNs and FL by analyzing how GNNs enhance FL training as well as how FL assists GNNs training, and 2) the auxiliary taxonomy provides a view on how FedGNNs deal with heterogeneity across FL clients. Through discussions of key ideas, challenges, and limitations of existing works, we envision future research directions that can help build more robust, explainable, efficient, fair, inductive, and comprehensive FedGNNs.

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