FedGTA: Topology-aware Averaging for Federated Graph Learning

Xunkai Li, Zhengyu Wu, Wentao Zhang, Yinlin Zhu, Ronghua Li, Guoren Wang
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Abstract

Federated Graph Learning (FGL) is a distributed machine learning paradigm that enables collaborative training on large-scale subgraphs across multiple local systems. Existing FGL studies fall into two categories: (i) FGL Optimization, which improves multi-client training in existing machine learning models; (ii) FGL Model, which enhances performance with complex local models and multi-client interactions. However, most FGL optimization strategies are designed specifically for the computer vision domain and ignore graph structure, presenting dissatisfied performance and slow convergence. Meanwhile, complex local model architectures in FGL Models studies lack scalability for handling large-scale subgraphs and have deployment limitations. To address these issues, we propose Federated Graph Topology-aware Aggregation (FedGTA), a personalized optimization strategy that optimizes through topology-aware local smoothing confidence and mixed neighbor features. During experiments, we deploy FedGTA in 12 multi-scale real-world datasets with the Louvain and Metis split. This allows us to evaluate the performance and robustness of FedGTA across a range of scenarios. Extensive experiments demonstrate that FedGTA achieves state-of-the-art performance while exhibiting high scalability and efficiency. The experiment includes ogbn-papers100M, the most representative large-scale graph database so that we can verify the applicability of our method to large-scale graph learning. To the best of our knowledge, our study is the first to bridge large-scale graph learning with FGL using this optimization strategy, contributing to the development of efficient and scalable FGL methods.
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FedGTA:拓扑感知平均法用于联盟图学习
联合图学习(FGL)是一种分布式机器学习范式,可在多个本地系统的大规模子图上进行协作训练。现有的 FGL 研究分为两类:(i) FGL 优化,用于改进现有机器学习模型中的多客户端训练;(ii) FGL 模型,用于提高复杂本地模型和多客户端交互的性能。然而,大多数 FGL 优化策略都是专为计算机视觉领域设计的,忽略了图结构,因此性能不尽人意,收敛速度较慢。同时,FGL 模型研究中的复杂局部模型架构缺乏处理大规模子图的可扩展性,并且存在部署限制。为了解决这些问题,我们提出了联邦图拓扑感知聚合(FedGTA),这是一种个性化优化策略,通过拓扑感知局部平滑置信度和混合邻居特征进行优化。在实验过程中,我们在 12 个多尺度真实世界数据集中部署了 FedGTA,这些数据集包括卢万数据集和 Metis 数据集。这使我们能够评估 FedGTA 在各种情况下的性能和鲁棒性。广泛的实验证明,FedGTA 实现了最先进的性能,同时表现出很高的可扩展性和效率。实验包括最具代表性的大规模图数据库 ogbn-papers100M,这样我们就能验证我们的方法在大规模图学习中的适用性。据我们所知,我们的研究是第一项利用这种优化策略将大规模图学习与 FGL 联系起来的研究,为开发高效、可扩展的 FGL 方法做出了贡献。
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