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Defence against adversarial attacks using classical and quantum-enhanced Boltzmann machines <sup>†</sup>

Aidan Kehoe, Péter Wittek, Yanbo Xue, Alejandro Pozas-Kerstjens

2021Machine Learning Science and Technology11 citationsDOIOpen Access PDF

Abstract

Abstract We provide a robust defence to adversarial attacks on discriminative algorithms. Neural networks are naturally vulnerable to small, tailored perturbations in the input data that lead to wrong predictions. On the contrary, generative models attempt to learn the distribution underlying a dataset, making them inherently more robust to small perturbations. We use Boltzmann machines for discrimination purposes as attack-resistant classifiers, and compare them against standard state-of-the-art adversarial defences. We find improvements ranging from 5% to 72% against attacks with Boltzmann machines on the MNIST dataset. We furthermore complement the training with quantum-enhanced sampling from the D-Wave 2000Q annealer, finding results comparable with classical techniques and with marginal improvements in some cases. These results underline the relevance of probabilistic methods in constructing neural networks and highlight a novel scenario of practical relevance where quantum computers, even with limited hardware capabilities, could provide advantages over classical computers.

Topics & Concepts

Boltzmann machineMNIST databaseComputer scienceDiscriminative modelProbabilistic logicRelevance (law)Complement (music)QuantumArtificial intelligenceMachine learningArtificial neural networkDeep neural networksAdversarial systemGenerative grammarTheoretical computer sciencePhysicsPolitical scienceBiochemistryChemistryQuantum mechanicsPhenotypeLawComplementationGeneAdversarial Robustness in Machine LearningAdvanced Memory and Neural ComputingQuantum Computing Algorithms and Architecture