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Neural Monte Carlo renormalization group

Journal
Physical Review Research
Journal Volume
3
Journal Issue
2
Date Issued
2021
Author(s)
Chung J.-H
YING-JER KAO  
DOI
10.1103/PhysRevResearch.3.023230
URI
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85114143149&doi=10.1103%2fPhysRevResearch.3.023230&partnerID=40&md5=a338ec3695f438b1fea2dbf6adbe3567
https://scholars.lib.ntu.edu.tw/handle/123456789/606838
Abstract
The key idea behind the renormalization group (RG) transformation is that properties of physical systems with very different microscopic makeups can be characterized by a few universal parameters. However, finding a systematic way to construct RG transformation for particular systems remains difficult due to the many possible choices of the weight factors in the RG procedure. Here we show, by identifying the conditional distribution in the restricted Boltzmann machine and the weight factor distribution in the RG procedure, that a valid real-space RG transformation can be learned without prior knowledge of the physical system. This neural Monte Carlo RG algorithm allows for direct computation of the RG flow and critical exponents. Our results establish a solid connection between the RG transformation in physics and the deep architecture in machine learning, paving the way for further interdisciplinary research. ? 2021 authors. Published by the American Physical Society.
Subjects
Statistical mechanics; Conditional distribution; Deep architectures; Direct computations; Interdisciplinary research; Monte Carlo renormalization groups; Renormalization group; Restricted boltzmann machine; Universal parameters; Monte Carlo methods
Other Subjects
Statistical mechanics; Conditional distribution; Deep architectures; Direct computations; Interdisciplinary research; Monte Carlo renormalization groups; Renormalization group; Restricted boltzmann machine; Universal parameters; Monte Carlo methods
Type
journal article

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