Maximum-Likelihood-Estimate Hamiltonian learning via efficient and robust quantum likelihood gradient
Abstract
Given the recent developments in quantum techniques, modeling the physical Hamiltonian of a target quantum many-body system is becoming an increasingly practical and vital research direction. Here, we propose an efficient strategy combining maximum likelihood estimation, gradient descent, and quantum many-body algorithms. Given the measurement outcomes, we optimize the target model Hamiltonian and density operator via a series of descents along the quantum likelihood gradient, which we prove is negative semi-definite with respect to the negative-log-likelihood function. In addition to such optimization efficiency, our maximum-likelihood-estimate Hamiltonian learning respects the locality of a given quantum system, therefore, extends readily to larger systems with available quantum many-body algorithms. Compared with previous approaches, it also exhibits better accuracy and overall stability toward noises, fluctuations, and temperature ranges, which we demonstrate with various examples.
Cite
@article{arxiv.2212.13718,
title = {Maximum-Likelihood-Estimate Hamiltonian learning via efficient and robust quantum likelihood gradient},
author = {Tian-Lun Zhao and Shi-Xin Hu and Yi Zhang},
journal= {arXiv preprint arXiv:2212.13718},
year = {2023}
}
Comments
13 pages, 11 figures