Training quantum embedding kernels on near-term quantum computers

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  • Thomas Hubregtsen
  • David Wierichs
  • Elies Gil-Fuster
  • Peter Jan H.S. Derks
  • Paul K. Faehrmann
  • Johannes Jakob Meyer

Kernel methods are a cornerstone of classical machine learning. The idea of using quantum computers to compute kernels has recently attracted attention. Quantum embedding kernels (QEKs), constructed by embedding data into the Hilbert space of a quantum computer, are a particular quantum kernel technique that is particularly suitable for noisy intermediate-scale quantum devices. Unfortunately, kernel methods face three major problems: Constructing the kernel matrix has quadratic computational complexity in the number of training samples, choosing the right kernel function is nontrivial, and the effects of noise are unknown. In this work, we addressed the latter two. In particular, we introduced the notion of trainable QEKs, based on the idea of classical model optimization methods. To train the parameters of the QEK, we proposed the use of kernel-target alignment. We verified the feasibility of this method, and showed that for our experimental setup we could reduce the training error significantly. Furthermore, we investigated the effects of device and finite sampling noise, and we evaluated various mitigation techniques numerically on classical hardware. We took the best performing strategy and evaluated it on data from a real quantum processing unit. We found that using this mitigation strategy demonstrated an increased kernel matrix quality.

OriginalsprogEngelsk
Artikelnummer042431
TidsskriftPhysical Review A
Vol/bind106
Udgave nummer4
Sider (fra-til)1-18
ISSN2469-9926
DOI
StatusUdgivet - 2022

Bibliografisk note

Funding Information:
The authors thank Xanadu for organizing QHack 2021, where the foundations of this work were laid as part of the Open Hackathon Challenge and the resulting funding. We further thank the AWS team for their support and funding that provided us access to the Rigetti and IonQ devices, as well as Sandbox@Alphabet for alpha access to the Floq cloud service, yielding access to the TPU-based quantum simulator. Additionally, we thank Richard Kueng for valuable input on bounds, as well as Jens Eisert and Maria Schuld for valuable feedback. We endorse Scientific and provide a emission Table in Appendix . This work was supported by the BMWi under the PlanQK initiative, the BMBF under the RealistiQ initiative, the Cluster of Excellence Project No. EF1-7, the European Flagship project PasQuanS and the DFG under Germany's Excellence Strategy Cluster of Excellence Matter and Light for Quantum Computing (ML4Q) Grant No. EXC2004/1 390534769 and the CRC 183 Project No. B01.

Publisher Copyright:
© 2022 American Physical Society.

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