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arXiv 提交日期: 2026-02-17
📄 Abstract - On the Geometric Coherence of Global Aggregation in Federated GNN

Federated Learning (FL) enables distributed training across multiple clients without centralized data sharing, while Graph Neural Networks (GNNs) model relational data through message passing. In federated GNN settings, client graphs often exhibit heterogeneous structural and propagation characteristics. When standard aggregation mechanisms are applied to such heterogeneous updates, the global model may converge numerically while exhibiting degraded relational this http URL work identifies a geometric failure mode of global aggregation in Cross- Domain Federated GNNs. Although GNN parameters are numerically represented as vectors, they encode relational transformations that govern the direction, strength, and sensitivity of information flow across graph neighborhoods. Aggregating updates originating from incompatible propagation regimes can therefore introduce destructive interference in this transformation this http URL leads to loss of coherence in global message passing. Importantly, this degradation is not necessarily reflected in conventional metrics such as loss or this http URL address this issue, we propose GGRS (Global Geometric Reference Structure), a server-side framework that regulates client updates prior to aggregation based on geometric admissibility criteria. GGRS preserves directional consistency of relational transformations as well as maintains diversity of admissible propagation subspaces. It also stabilizes sensitivity to neighborhood interactions, without accessing client data or graph topology. Experiments on heterogeneous GNN-native, Amazon Co-purchase datasets demonstrate that GGRS preserves global message-passing coherence across training rounds by highlighting the necessity of geometry-aware regulation in federated graph learning.

顶级标签: systems model training machine learning
详细标签: federated learning graph neural networks geometric aggregation heterogeneous graphs model coherence 或 搜索:

联邦图神经网络中全局聚合的几何一致性研究 / On the Geometric Coherence of Global Aggregation in Federated GNN


1️⃣ 一句话总结

这篇论文发现,在跨域联邦图神经网络中,直接聚合来自不同结构客户端的模型更新会破坏信息传递的几何一致性,导致模型性能下降,并提出了一种名为GGRS的服务器端框架,通过几何准则来调控更新,从而在保护隐私的同时维持全局消息传递的有效性。

源自 arXiv: 2602.15510