Self-learning projective quantum Monte Carlo simulations guided by restricted Boltzmann machines

被引:19
|
作者
Pilati, S. [1 ]
Inack, E. M. [2 ]
Pieri, P. [1 ,3 ]
机构
[1] Univ Camerino, Sch Sci & Technol, Phys Div, I-62032 Camerino, MC, Italy
[2] Perimeter Inst Theoret Phys, Waterloo, ON N2L 2Y5, Canada
[3] Ist Nazl Fis Nucl, Sez Perugia, I-06123 Perugia, PG, Italy
基金
美国国家科学基金会;
关键词
GREEN-FUNCTION; GROUND-STATE; SCHRODINGER-EQUATION; ALGORITHM; GAS;
D O I
10.1103/PhysRevE.100.043301
中图分类号
O35 [流体力学]; O53 [等离子体物理学];
学科分类号
070204 ; 080103 ; 080704 ;
摘要
The projective quantum Monte Carlo (PQMC) algorithms are among the most powerful computational techniques to simulate the ground-state properties of quantum many-body systems. However, they are efficient only if a sufficiently accurate trial wave function is used to guide the simulation. In the standard approach, this guiding wave function is obtained in a separate simulation that performs a variational minimization Here we show how to perform PQMC simulations guided by an adaptive wave function based on a restricted Boltzmann machine. This adaptive wave function is optimized along the PQMC simulation via unsupervised machine learning, avoiding the need of a separate variational optimization. As a byproduct, this technique provides an accurate ansatz for the ground-state wave function, which is obtained by minimizing the Kullback-Leibler divergence with respect to the PQMC samples, rather than by minimizing the energy expectation value as in standard variational optimizations. The high accuracy of this self-learning PQMC technique is demonstrated for a paradigmatic sign-problem-free model, namely, the ferromagnetic quantum Ising chain, showing very precise agreement with the predictions of the Jordan-Wigner theory and of loop quantum Monte Carlo simulations performed in the low-temperature limit.
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页数:12
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