Self-learning Monte Carlo with deep neural networks
Author(s)
Shen, Huitao; Liu, Junwei; Fu, Liang
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The self-learning Monte Carlo (SLMC) method is a general algorithm to speedup MC simulations. Its efficiency has been demonstrated in various systems by introducing an effective model to propose global moves in the configuration space. In this paper, we show that deep neural networks can be naturally incorporated into SLMC, and without any prior knowledge can learn the original model accurately and efficiently. Demonstrated in quantum impurity models, we reduce the complexity for a local update from O(β²) in Hirsch-Fye algorithm to O(βlnβ), which is a significant speedup especially for systems at low temperatures.
Date issued
2018-05Department
Massachusetts Institute of Technology. Department of PhysicsJournal
Physical Review B
Publisher
American Physical Society
Citation
Shen, Huitao et al. "Self-learning Monte Carlo with deep neural networks." Physical Review B 97, 20 (May 2018): 205140 © 2018 American Physical Society
Version: Final published version
ISSN
2469-9950
2469-9969