Publication | Open Access
FedNoRo: Towards Noise-Robust Federated Learning by Addressing Class Imbalance and Label Noise Heterogeneity
42
Citations
28
References
2023
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningLabel Noise HeterogeneityLabel NoiseFederated StructureData ScienceData MiningPattern RecognitionLabel LearningClass ImbalanceSemi-supervised LearningStatisticsSupervised LearningKnowledge DiscoveryData PrivacyNoisy DataComputer ScienceDistributed LearningPrivacyFederated LearningStatistical Inference
Federated noisy label learning (FNLL) is emerging as a promising tool for privacy-preserving multi-source decentralized learning. Existing research, relying on the assumption of class-balanced global data, might be incapable to model complicated label noise, especially in medical scenarios. In this paper, we first formulate a new and more realistic federated label noise problem where global data is class-imbalanced and label noise is heterogeneous, and then propose a two-stage framework named FedNoRo for noise-robust federated learning. Specifically, in the first stage of FedNoRo, per-class loss indicators followed by Gaussian Mixture Model are deployed for noisy client identification. In the second stage, knowledge distillation and a distance-aware aggregation function are jointly adopted for noise-robust federated model updating. Experimental results on the widely-used ICH and ISIC2019 datasets demonstrate the superiority of FedNoRo against the state-of-the-art FNLL methods for addressing class imbalance and label noise heterogeneity in real-world FL scenarios.
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