QFAL: Quantum Federated Adversarial Learning
Walid El Maouaki, Nouhaila Innan, Alberto Marchisio, Taoufik Said,, Mohamed Bennai, and Muhammad Shafique

TL;DR
This paper introduces QFAL, a quantum federated adversarial learning framework that enhances robustness against adversarial attacks in quantum federated systems through collaborative training and systematic evaluation.
Contribution
It pioneers the integration of adversarial training into quantum federated learning, analyzing the effects of client number, adversarial coverage, and attack strength on robustness.
Findings
Partial adversarial training improves robustness against moderate perturbations.
Larger federations balance accuracy and robustness more effectively.
Full adversarial training can restore accuracy but increases vulnerability under strong attacks.
Abstract
Quantum federated learning (QFL) merges the privacy advantages of federated systems with the computational potential of quantum neural networks (QNNs), yet its vulnerability to adversarial attacks remains poorly understood. This work pioneers the integration of adversarial training into QFL, proposing a robust framework, quantum federated adversarial learning (QFAL), where clients collaboratively defend against perturbations by combining local adversarial example generation with federated averaging (FedAvg). We systematically evaluate the interplay between three critical factors: client count (5, 10, 15), adversarial training coverage (0-100%), and adversarial attack perturbation strength (epsilon = 0.01-0.5), using the MNIST dataset. Our experimental results show that while fewer clients often yield higher clean-data accuracy, larger federations can more effectively balance accuracy…
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