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research article

Mixed Nash for Robust Federated Learning

Xie, Wanyun  
•
Pethick, Thomas Michaelsen  
•
Ramezani-Kebrya, Ali
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February 21, 2024
Transactions on Machine Learning Research

We study robust federated learning (FL) within a game theoretic framework to alleviate the server vulnerabilities to even an informed adversary who can tailor training-time attacks (Fang et al., 2020; Xie et al., 2020a; Ozfatura et al., 2022; Rodríguez-Barroso et al., 2023). Specifically, we introduce RobustTailor, a simulation-based framework that prevents the adversary from being omniscient and derives its convergence guarantees. RobustTailor improves robustness to training-time attacks significantly with a minor trade-off of privacy. Empirical results under challenging attacks show that RobustTailor performs close to an upper bound with perfect knowledge of honest clients.

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1780_Mixed_Nash_for_Robust_Fed.pdf

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Main Document

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http://purl.org/coar/version/c_ab4af688f83e57aa

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openaccess

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CC BY

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7.83 MB

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Adobe PDF

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