Enhancing Quantum Adversarial Robustness by Randomized Encodings

Tsinghua
arXiv:2212.02531v140 citationsh-index: 34
Originality Incremental advance
AI Analysis

This work addresses security and reliability issues in quantum learning technologies, offering defense strategies against adversarial perturbations, though it is incremental as it builds on existing quantum and adversarial robustness concepts.

The paper tackles the vulnerability of quantum machine learning systems to adversarial attacks by proposing a defense scheme using randomized encodings, proving that random unitary encoders cause exponentially vanishing gradients for adversarial circuits and that error correction encoders enhance robustness, with robustness quantified via quantum differential privacy.

The interplay between quantum physics and machine learning gives rise to the emergent frontier of quantum machine learning, where advanced quantum learning models may outperform their classical counterparts in solving certain challenging problems. However, quantum learning systems are vulnerable to adversarial attacks: adding tiny carefully-crafted perturbations on legitimate input samples can cause misclassifications. To address this issue, we propose a general scheme to protect quantum learning systems from adversarial attacks by randomly encoding the legitimate data samples through unitary or quantum error correction encoders. In particular, we rigorously prove that both global and local random unitary encoders lead to exponentially vanishing gradients (i.e. barren plateaus) for any variational quantum circuits that aim to add adversarial perturbations, independent of the input data and the inner structures of adversarial circuits and quantum classifiers. In addition, we prove a rigorous bound on the vulnerability of quantum classifiers under local unitary adversarial attacks. We show that random black-box quantum error correction encoders can protect quantum classifiers against local adversarial noises and their robustness increases as we concatenate error correction codes. To quantify the robustness enhancement, we adapt quantum differential privacy as a measure of the prediction stability for quantum classifiers. Our results establish versatile defense strategies for quantum classifiers against adversarial perturbations, which provide valuable guidance to enhance the reliability and security for both near-term and future quantum learning technologies.

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