Beyond Rigid Alignment: Graph Federated Learning via Dual Manifold Calibration
Wentao Yu, Bo Han, Jie Yang, Chen Gong

TL;DR
This paper introduces FedGMC, a novel graph federated learning method that uses dual manifold calibration to better handle heterogeneity across distributed subgraphs, improving personalization and global alignment.
Contribution
FedGMC proposes a unified manifold perspective with dual calibration mechanisms for semantic and structural heterogeneity in GFL, surpassing existing rigid alignment approaches.
Findings
FedGMC outperforms state-of-the-art methods on eleven diverse graph datasets.
The dual manifold calibration effectively balances global commonality and local personalization.
Extensive experiments validate the superiority of FedGMC in heterogeneous graph scenarios.
Abstract
Graph Federated Learning (GFL) enables collaborative representation learning across distributed subgraphs while preserving privacy. However, heterogeneity remains a critical challenge, as subgraphs across clients typically differ significantly in both semantics and structures. Existing methods address heterogeneity by enforcing the rigid alignment of model parameters or prototypes between clients and the server. However, these alignments implicitly rely on a restrictive global linearity assumption that summarizes local data distributions using a single and globally consistent representation space. This severely compresses the personalized representation space of clients and fails to preserve diverse local graph distributions. To overcome these limitations, we propose Federated Graph Manifold Calibration (FedGMC), a novel paradigm that tackles semantic heterogeneity and structural…
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