Communication-Efficient Robust Federated Learning with Noisy Labels
Junyi Li, Jian Pei, Heng Huang

TL;DR
This paper introduces a communication-efficient federated learning method to handle noisy labels by using a bilevel optimization approach with novel hypergradient estimation techniques, improving robustness and performance.
Contribution
It proposes extit{Comm-FedBiO}, a new algorithm for federated bilevel optimization that reduces communication costs and effectively mitigates label noise in federated learning.
Findings
Superior performance on real-world datasets
Effective mitigation of noisy labels
Reduced communication costs
Abstract
Federated learning (FL) is a promising privacy-preserving machine learning paradigm over distributed located data. In FL, the data is kept locally by each user. This protects the user privacy, but also makes the server difficult to verify data quality, especially if the data are correctly labeled. Training with corrupted labels is harmful to the federated learning task; however, little attention has been paid to FL in the case of label noise. In this paper, we focus on this problem and propose a learning-based reweighting approach to mitigate the effect of noisy labels in FL. More precisely, we tuned a weight for each training sample such that the learned model has optimal generalization performance over a validation set. More formally, the process can be formulated as a Federated Bilevel Optimization problem. Bilevel optimization problem is a type of optimization problem with two…
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