LGApr 16, 2025

Federated Spectral Graph Transformers Meet Neural Ordinary Differential Equations for Non-IID Graphs

arXiv:2504.11808v11 citationsh-index: 1Has CodeTrans. Mach. Learn. Res.
Originality Incremental advance
AI Analysis

This work addresses privacy and data distribution issues in real-world graph applications like social networks and fraud detection, though it appears incremental as it builds on existing federated and spectral GNN techniques.

The paper tackles the challenge of training Graph Neural Networks (GNNs) on decentralized, non-IID graph data by proposing a federated learning method that combines spectral GNNs with neural ODEs, achieving performance comparable to existing IID methods and showing improvements on both homophilic and heterophilic graphs.

Graph Neural Network (GNN) research is rapidly advancing due to GNNs' capacity to learn distributed representations from graph-structured data. However, centralizing large volumes of real-world graph data for GNN training is often impractical due to privacy concerns, regulatory restrictions, and commercial competition. Federated learning (FL), a distributed learning paradigm, offers a solution by preserving data privacy with collaborative model training. Despite progress in training huge vision and language models, federated learning for GNNs remains underexplored. To address this challenge, we present a novel method for federated learning on GNNs based on spectral GNNs equipped with neural ordinary differential equations (ODE) for better information capture, showing promising results across both homophilic and heterophilic graphs. Our approach effectively handles non-Independent and Identically Distributed (non-IID) data, while also achieving performance comparable to existing methods that only operate on IID data. It is designed to be privacy-preserving and bandwidth-optimized, making it suitable for real-world applications such as social network analysis, recommendation systems, and fraud detection, which often involve complex, non-IID, and heterophilic graph structures. Our results in the area of federated learning on non-IID heterophilic graphs demonstrate significant improvements, while also achieving better performance on homophilic graphs. This work highlights the potential of federated learning in diverse and challenging graph settings. Open-source code available on GitHub (https://github.com/SpringWiz11/Fed-GNODEFormer).

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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