Litcius/Paper detail

Robust in practice: Adversarial attacks on quantum machine learning

Haoran Liao, Ian Convy, William J. Huggins, K. Birgitta Whaley

2021Physical review. A/Physical review, A40 citationsDOIOpen Access PDF

Abstract

State-of-the-art classical neural networks are observed to be vulnerable to small crafted adversarial perturbations. A more severe vulnerability has been noted for quantum machine learning (QML) models classifying Haar-random pure states. This stems from the concentration of measure phenomenon, a property of the metric space when sampled probabilistically, and is independent of the classification protocol. To provide insights into the adversarial robustness of a quantum classifier on real-world classification tasks, we focus on the adversarial robustness in classifying a subset of encoded states that are smoothly generated from a Gaussian latent space. We show that the vulnerability of this task is considerably weaker than that of classifying Haar-random pure states. In particular, we find only mildly polynomially decreasing robustness in the number of qubits, in contrast to the exponentially decreasing robustness when classifying Haar-random pure states and suggesting that QML models can be useful for real-world classification tasks.

Topics & Concepts

Robustness (evolution)Artificial intelligenceGaussianComputer scienceQuantum stateMachine learningAdversarial systemQuantumMathematicsPattern recognition (psychology)Theoretical computer scienceQuantum mechanicsChemistryPhysicsBiochemistryGeneQuantum Computing Algorithms and ArchitectureAdversarial Robustness in Machine LearningQuantum Information and Cryptography