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Main Authors: Li, De, Qian, Haodong, Li, Qiyu, Tan, Zhou, Gan, Zemin, Wang, Jinyan, Li, Xianxian
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.18905
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author Li, De
Qian, Haodong
Li, Qiyu
Tan, Zhou
Gan, Zemin
Wang, Jinyan
Li, Xianxian
author_facet Li, De
Qian, Haodong
Li, Qiyu
Tan, Zhou
Gan, Zemin
Wang, Jinyan
Li, Xianxian
contents Federated Graph Learning (FGL) is a distributed machine learning paradigm based on graph neural networks, enabling secure and collaborative modeling of local graph data among clients. However, label noise can degrade the global model's generalization performance. Existing federated label noise learning methods, primarily focused on computer vision, often yield suboptimal results when applied to FGL. To address this, we propose a robust federated graph learning method with label noise, termed FedRGL. FedRGL introduces dual-perspective consistency noise node filtering, leveraging both the global model and subgraph structure under class-aware dynamic thresholds. To enhance client-side training, we incorporate graph contrastive learning, which improves encoder robustness and assigns high-confidence pseudo-labels to noisy nodes. Additionally, we measure model quality via predictive entropy of unlabeled nodes, enabling adaptive robust aggregation of the global model. Comparative experiments on multiple real-world graph datasets show that FedRGL outperforms 12 baseline methods across various noise rates, types, and numbers of clients.
format Preprint
id arxiv_https___arxiv_org_abs_2411_18905
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FedRGL: Robust Federated Graph Learning for Label Noise
Li, De
Qian, Haodong
Li, Qiyu
Tan, Zhou
Gan, Zemin
Wang, Jinyan
Li, Xianxian
Machine Learning
Federated Graph Learning (FGL) is a distributed machine learning paradigm based on graph neural networks, enabling secure and collaborative modeling of local graph data among clients. However, label noise can degrade the global model's generalization performance. Existing federated label noise learning methods, primarily focused on computer vision, often yield suboptimal results when applied to FGL. To address this, we propose a robust federated graph learning method with label noise, termed FedRGL. FedRGL introduces dual-perspective consistency noise node filtering, leveraging both the global model and subgraph structure under class-aware dynamic thresholds. To enhance client-side training, we incorporate graph contrastive learning, which improves encoder robustness and assigns high-confidence pseudo-labels to noisy nodes. Additionally, we measure model quality via predictive entropy of unlabeled nodes, enabling adaptive robust aggregation of the global model. Comparative experiments on multiple real-world graph datasets show that FedRGL outperforms 12 baseline methods across various noise rates, types, and numbers of clients.
title FedRGL: Robust Federated Graph Learning for Label Noise
topic Machine Learning
url https://arxiv.org/abs/2411.18905