Towards Effective Federated Graph Foundation Model via Mitigating Knowledge Entanglement
Yinlin Zhu, Xunkai Li, Jishuo Jia, Miao Hu, Di Wu, Meikang Qiu

TL;DR
This paper introduces FedGFM+, a novel framework that enhances federated graph foundation models by reducing knowledge entanglement through domain-aware initialization and adaptive prompt pools, improving cross-domain graph learning.
Contribution
It proposes FedGFM+, integrating domain-aware prototypes and adaptive prompts to disentangle knowledge in federated graph foundation models, enabling better domain adaptation.
Findings
Outperforms 20 baselines across 8 benchmarks.
Effectively reduces knowledge entanglement.
Enhances downstream domain adaptation.
Abstract
Recent advances in graph machine learning have shifted to data-centric paradigms, driven by two emerging fields: (1) Federated graph learning (FGL) enables multi-client collaboration but faces challenges from data and task heterogeneity, limiting its practicality; (2) Graph foundation models (GFM) offer strong domain generalization but are usually trained on single machines, missing out on cross-silo data and resources. These paradigms are complementary, and their integration brings notable benefits. Motivated by this, we propose FedGFM, a novel decentralized GFM training paradigm. However, a key challenge is knowledge entanglement, where multi-domain knowledge merges into indistinguishable representations, hindering downstream adaptation. To address this, we present FedGFM+, an enhanced framework with two core modules to reduce knowledge entanglement: (1) AncDAI: A global…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Privacy-Preserving Technologies in Data · Domain Adaptation and Few-Shot Learning
