面向图联邦学习的异质性感知知识共享方法 / Heterogeneity-Aware Knowledge Sharing for Graph Federated Learning
1️⃣ 一句话总结
本文提出了一种名为FedSSA的新方法,通过同时对齐节点语义和网络结构特征,有效解决了图联邦学习中因数据分布和拓扑结构差异带来的异质性问题,从而提升了模型在多种图数据上的学习性能。
Graph Federated Learning (GFL) enables distributed graph representation learning while protecting the privacy of graph data. However, GFL suffers from heterogeneity arising from diverse node features and structural topologies across multiple clients. To address both types of heterogeneity, we propose a novel graph Federated learning method via Semantic and Structural Alignment (FedSSA), which shares the knowledge of both node features and structural topologies. For node feature heterogeneity, we propose a novel variational model to infer class-wise node distributions, so that we can cluster clients based on inferred distributions and construct cluster-level representative distributions. We then minimize the divergence between local and cluster-level distributions to facilitate semantic knowledge sharing. For structural heterogeneity, we employ spectral Graph Neural Networks (GNNs) and propose a spectral energy measure to characterize structural information, so that we can cluster clients based on spectral energy and build cluster-level spectral GNNs. We then align the spectral characteristics of local spectral GNNs with those of cluster-level spectral GNNs to enable structural knowledge sharing. Experiments on six homophilic and five heterophilic graph datasets under both non-overlapping and overlapping partitioning settings demonstrate that FedSSA consistently outperforms eleven state-of-the-art methods.
面向图联邦学习的异质性感知知识共享方法 / Heterogeneity-Aware Knowledge Sharing for Graph Federated Learning
本文提出了一种名为FedSSA的新方法,通过同时对齐节点语义和网络结构特征,有效解决了图联邦学习中因数据分布和拓扑结构差异带来的异质性问题,从而提升了模型在多种图数据上的学习性能。
源自 arXiv: 2601.21589