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research article

Learning ground states of gapped quantum Hamiltonians with Kernel Methods

Giuliani, Clemens  
•
Vicentini, Filippo  
•
Rossi, Riccardo  
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August 29, 2023
Quantum

Neural network approaches to approximate the ground state of quantum hamiltonians require the numerical solution of a highly nonlinear optimization problem. We introduce a statistical learning approach that makes the optimization trivial by using kernel methods. Our scheme is an approximate realization of the power method, where supervised learning is used to learn the next step of the power iteration. We show that the ground state properties of arbitrary gapped quantum hamiltonians can be reached with polynomial resources under the assumption that the supervised learning is efficient. Using kernel ridge regression, we provide numerical evidence that the learning assumption is verified by applying our scheme to find the ground states of several prototypical interacting many-body quantum systems, both in one and two dimensions, showing the flexibility of our approach.

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Type
research article
DOI
10.22331/q-2023-08-29-1096
Web of Science ID

WOS:001120812800001

Author(s)
Giuliani, Clemens  
Vicentini, Filippo  
Rossi, Riccardo  
Carleo, Giuseppe  
Date Issued

2023-08-29

Publisher

Verein Forderung Open Access Publizierens Quantenwissenschaf

Published in
Quantum
Volume

7

Article Number

1096

Subjects

Physical Sciences

•

Many-Body Problem

•

Monte-Carlo

•

Ising-Model

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CQSL  
FunderGrant Number

Swiss National Science Foundation

200021_200336

Available on Infoscience
February 20, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/204563
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