Paper ID: 2503.03684 • Published Mar 5, 2025
Towards Trustworthy Federated Learning
Alina Basharat, Yijun Bian, Ping Xu, Zhi Tian
University of Texas Rio Grande Valley•University of Copenhagen•George Mason University
TL;DR
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This paper develops a comprehensive framework to address three critical
trustworthy challenges in federated learning (FL): robustness against Byzantine
attacks, fairness, and privacy preservation. To improve the system's defense
against Byzantine attacks that send malicious information to bias the system's
performance, we develop a Two-sided Norm Based Screening (TNBS) mechanism,
which allows the central server to crop the gradients that have the l lowest
norms and h highest norms. TNBS functions as a screening tool to filter out
potential malicious participants whose gradients are far from the honest ones.
To promote egalitarian fairness, we adopt the q-fair federated learning
(q-FFL). Furthermore, we adopt a differential privacy-based scheme to prevent
raw data at local clients from being inferred by curious parties. Convergence
guarantees are provided for the proposed framework under different scenarios.
Experimental results on real datasets demonstrate that the proposed framework
effectively improves robustness and fairness while managing the trade-off
between privacy and accuracy. This work appears to be the first study that
experimentally and theoretically addresses fairness, privacy, and robustness in
trustworthy FL.
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