Quantum Machine Learning for Electronic Structure Calculations
Abstract
Considering recent advancements and successes in the development of efficient quantum algorithms for electronic structure calculations --- alongside impressive results using machine learning techniques for computation --- hybridizing quantum computing with machine learning for the intent of performing electronic structure calculations is a natural progression. Here we report a hybrid quantum algorithm employing a restricted Boltzmann machine to obtain accurate molecular potential energy surfaces. By exploiting a quantum algorithm to help optimize the underlying objective function, we obtained an efficient procedure for the calculation of the electronic ground state energy for a small molecule system. Our approach achieves high accuracy for the ground state energy for H, LiH, HO at a specific location on its potential energy surface with a finite basis set. With the future availability of larger-scale quantum computers, quantum machine learning techniques are set to become powerful tools to obtain accurate values for electronic structures.
Cite
@article{arxiv.1803.10296,
title = {Quantum Machine Learning for Electronic Structure Calculations},
author = {Rongxin Xia and Sabre Kais},
journal= {arXiv preprint arXiv:1803.10296},
year = {2018}
}
Comments
Fixed Some typos