UWSpace is currently experiencing technical difficulties resulting from its recent migration to a new version of its software. These technical issues are not affecting the submission and browse features of the site. UWaterloo community members may continue submitting items to UWSpace. We apologize for the inconvenience, and are actively working to resolve these technical issues.
 

Neural network enhanced measurement efficiency for molecular groundstates

Loading...
Thumbnail Image

Date

2023-02-09

Authors

Iouchtchenko, Dmitri
Gonthier, Jérôme F.
Perdomo-Ortiz, Alejandro
Melko, Roger

Journal Title

Journal ISSN

Volume Title

Publisher

IOP Publishing

Abstract

It is believed that one of the first useful applications for a quantum computer will be the preparation of groundstates of molecular Hamiltonians. A crucial task involving state preparation and readout is obtaining physical observables of such states, which are typically estimated using projective measurements on the qubits. At present, measurement data is costly and time-consuming to obtain on any quantum computing architecture, which has significant consequences for the statistical errors of estimators. In this paper, we adapt common neural network models (restricted Boltzmann machines and recurrent neural networks) to learn complex groundstate wavefunctions for several prototypical molecular qubit Hamiltonians from typical measurement data. By relating the accuracy ε of the reconstructed groundstate energy to the number of measurements, we find that using a neural network model provides a robust improvement over using single-copy measurement outcomes alone to reconstruct observables. This enhancement yields an asymptotic scaling near ε⁻¹ for the model-based approaches, as opposed to ε⁻² in the case of classical shadow tomography.

Description

Keywords

quantum tomography, classical shadow tomography, machine learning, neural networks, restricted Boltzmann machines, recurrent neural networks

LC Keywords

Citation