Federated learning with noisy labels: A comprehensive and concise review of current methodologies and future directions
Dong, J., Zhu, R.
ORCID: 0000-0002-9944-0369, Shang, X. & Xue, J-H. (2026).
Federated learning with noisy labels: A comprehensive and concise review of current methodologies and future directions.
Neural Networks, 201,
article number 108889.
doi: 10.1016/j.neunet.2026.108889
Abstract
Federated learning, a vital paradigm in modern machine learning, enables private and decentralised training of models that is crucial for learning from sensitive data. Noisy label learning, another vital paradigm in modern machine learning, addresses the training of models from the data with potentially incorrect labels. Their integration, namely federated learning with noisy labels (FLNL), is an emerging but challenging topic arising from the practice of machine learning, which, however, still lacks a review of its research progress. The aim of this paper is to fill in this gap. We first summarise four core challenges to FLNL: localised label noise, across-client heterogeneity of label noise, localised overfitting to label noise, and inadequate benchmarking. We then propose a taxonomy to categorise current FLNL studies into four types that address the four challenges correspondingly: sample-wise methods, client-wise methods, model-wise methods, and benchmark-wise studies. This work offers the first comprehensive and concise review dedicated to FLNL; moreover, we also provide future research directions for this rapidly evolving and practically significant field.
| Publication Type: | Article |
|---|---|
| Additional Information: | © 2026 The Authors. Published by Elsevier Ltd. This is an open access article distributed under the terms of the Creative Commons CC-BY license, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. |
| Publisher Keywords: | Federated learning, Noisy label learning, Federated learning with label noise, Comprehensive review |
| Subjects: | H Social Sciences > HG Finance Q Science > QA Mathematics > QA75 Electronic computers. Computer science |
| Departments: | Bayes Business School Bayes Business School > Faculty of Actuarial Science & Insurance |
| SWORD Depositor: |
Available under License Creative Commons Attribution.
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