Robust Federated Learning against Noisy Clients via Masked Optimization
Xuefeng Jiang, Tian Wen, Zhiqin Yang, Lvhua Wu, Yufeng Chen, Sheng Sun, Yuwei Wang, Min Liu

TL;DR
This paper introduces MaskedOptim, a two-stage federated learning framework that detects and corrects label noise from clients, improving model robustness and data quality across diverse noisy scenarios.
Contribution
The paper proposes a novel two-stage optimization framework with label correction and robust aggregation to handle noisy client data in federated learning.
Findings
Enhanced robustness against label noise in federated learning.
Effective label correction improves data quality of noisy clients.
Outperforms baseline methods on multiple datasets with diverse noise patterns.
Abstract
In recent years, federated learning (FL) has made significant advance in privacy-sensitive applications. However, it can be hard to ensure that FL participants provide well-annotated data for training. The corresponding annotations from different clients often contain complex label noise at varying levels. This label noise issue has a substantial impact on the performance of the trained models, and clients with greater noise levels can be largely attributed for this degradation. To this end, it is necessary to develop an effective optimization strategy to alleviate the adverse effects of these noisy clients.In this study, we present a two-stage optimization framework, MaskedOptim, to address this intricate label noise problem. The first stage is designed to facilitate the detection of noisy clients with higher label noise rates. The second stage focuses on rectifying the labels of the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques · Cryptography and Data Security
