QUANT-PHLGMar 31, 2021

Towards understanding the power of quantum kernels in the NISQ era

arXiv:2103.16774v295 citations
AI Analysis

This addresses a crucial open problem for quantum computing researchers by clarifying the limitations of quantum kernels in practical NISQ settings, though it is incremental as it builds on prior work.

The study investigates whether quantum kernel learning retains advantages under noisy intermediate-scale quantum (NISQ) conditions, finding that quantum kernels lose their edge with large datasets, few measurements, or high noise, and proposes an indefinite kernel learning method to preserve superiority.

A key problem in the field of quantum computing is understanding whether quantum machine learning (QML) models implemented on noisy intermediate-scale quantum (NISQ) machines can achieve quantum advantages. Recently, Huang et al. [Nat Commun 12, 2631] partially answered this question by the lens of quantum kernel learning. Namely, they exhibited that quantum kernels can learn specific datasets with lower generalization error over the optimal classical kernel methods. However, most of their results are established on the ideal setting and ignore the caveats of near-term quantum machines. To this end, a crucial open question is: does the power of quantum kernels still hold under the NISQ setting? In this study, we fill this knowledge gap by exploiting the power of quantum kernels when the quantum system noise and sample error are considered. Concretely, we first prove that the advantage of quantum kernels is vanished for large size of datasets, few number of measurements, and large system noise. With the aim of preserving the superiority of quantum kernels in the NISQ era, we further devise an effective method via indefinite kernel learning. Numerical simulations accord with our theoretical results. Our work provides theoretical guidance of exploring advanced quantum kernels to attain quantum advantages on NISQ devices.

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