QUANT-PHCRLGJun 21, 2023

Universal adversarial perturbations for multiple classification tasks with quantum classifiers

arXiv:2306.11974v35 citationsh-index: 3
Originality Incremental advance
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This addresses security risks in quantum machine learning by showing how universal perturbations can simplify attacks, potentially impacting future quantum technologies.

The paper tackled the vulnerability of quantum classifiers to universal adversarial perturbations across multiple classification tasks, finding that a single perturbation could deceive models achieving near state-of-the-art accuracy on hand-written digits and medical MRI images.

Quantum adversarial machine learning is an emerging field that studies the vulnerability of quantum learning systems against adversarial perturbations and develops possible defense strategies. Quantum universal adversarial perturbations are small perturbations, which can make different input samples into adversarial examples that may deceive a given quantum classifier. This is a field that was rarely looked into but worthwhile investigating because universal perturbations might simplify malicious attacks to a large extent, causing unexpected devastation to quantum machine learning models. In this paper, we take a step forward and explore the quantum universal perturbations in the context of heterogeneous classification tasks. In particular, we find that quantum classifiers that achieve almost state-of-the-art accuracy on two different classification tasks can be both conclusively deceived by one carefully-crafted universal perturbation. This result is explicitly demonstrated with well-designed quantum continual learning models with elastic weight consolidation method to avoid catastrophic forgetting, as well as real-life heterogeneous datasets from hand-written digits and medical MRI images. Our results provide a simple and efficient way to generate universal perturbations on heterogeneous classification tasks and thus would provide valuable guidance for future quantum learning technologies.

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