Quantum Interval Bound Propagation for Certified Training of Quantum Neural Networks
Emma Andrews, Nahyeon Kim, Prabhat Mishra
TLDR
Introduces Quantum Interval Bound Propagation (QIBP) for certified training of quantum neural networks, ensuring robustness against adversarial perturbations.
Key contributions
- Proposes Quantum Interval Bound Propagation (QIBP) for certified training in QML.
- Certifies quantum neural networks to be robust against adversarial perturbations.
- Compares QIBP implementations using interval and affine arithmetic.
Why it matters
This paper fills a critical gap in quantum machine learning by introducing a certified training method. QIBP ensures quantum neural networks are robust and reliable against adversarial attacks, which is crucial for their trustworthiness and deployment in sensitive applications.
Original Abstract
Quantum machine learning is a promising field for efficiently learning features of a dataset to perform a specified task, such as classification. Interval bound propagation (IBP) is a popular certified training method in classical machine learning, where the lower and upper bounds are tracked throughout the model. These bounds are used during training to ensure that the model is certified to predict the correct label even under adversarial perturbations. While IBP is successful in classical domain, there are limited certified training efforts in quantum domain. In this paper, we present quantum interval bound propagation (QIBP) to establish a certified training routine for quantum machine learning, certifying the accuracy of models under adversarial perturbations. We implement QIBP using both interval and affine arithmetic to explore the tradeoffs between the two implementations in terms of accuracy and other design considerations. Extensive evaluation demonstrates that the resulting certified trained models have robust decision boundaries, guaranteed to predict the correct class for the samples within the trained adversarial robustness bounds.
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