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Pis'ma v Zhurnal Èksperimental'noi i Teoreticheskoi Fiziki, 2024, Volume 120, Issue 8, Pages 644–649
DOI: https://doi.org/10.31857/S0370274X24100239
(Mi jetpl7355)
 

This article is cited in 3 scientific papers (total in 3 papers)

METHODS OF PHYSICAL INVESTIGATION

Influence of anisotropy on the study of the critical behavior of spin models by machine learning methods

D. D. Sukhoverkhovaab, L. N. Shchurba

a Landau Institute of Theoretical Physics, Russian Academy of Sciences, Chernogolovka, Moscow region, 142432 Russia
b HSE University, Moscow, 101000 Russia
References:
Abstract: In this paper, we applied a deep neural network to study the issue of knowledge transferability between statistical mechanics models. The following computer experiment was conducted. A convolutional neural network was trained to solve the problem of binary classification of snapshots of the Ising model's spin configuration on a two-dimensional lattice. During testing, snapshots of the Ising model spins on a lattice with diagonal ferromagnetic and antiferromagnetic connections were fed to the input of the neural network. Estimates of the probability of samples belonging to the paramagnetic phase were obtained from the outputs of the tested network. The analysis of these probabilities allowed us to estimate the critical temperature and the critical correlation length exponent. It turned out that at weak anisotropy the neural network satisfactorily predicts the transition point and the value of the correlation length exponent. Strong anisotropy leads to a noticeable deviation of the predicted values from the precisely known ones. Qualitatively, strong anisotropy is associated with the presence of oscillations of the correlation function above the Stefenson disorder temperature and further approach to the point of the fully frustrated case.
Funding agency Grant number
Russian Science Foundation 22-11-00259
This work was supported by the Russian Science Foundation, project no. 22-11-00259.
Received: 16.09.2024
Revised: 16.09.2024
Accepted: 18.09.2024
English version:
Journal of Experimental and Theoretical Physics Letters, 2024, Volume 120, Issue 8, Pages 616–621
DOI: https://doi.org/10.1134/S0021364024603440
Bibliographic databases:
Document Type: Article
Language: Russian
Citation: D. D. Sukhoverkhova, L. N. Shchur, “Influence of anisotropy on the study of the critical behavior of spin models by machine learning methods”, Pis'ma v Zh. Èksper. Teoret. Fiz., 120:8 (2024), 644–649; JETP Letters, 120:8 (2024), 616–621
Citation in format AMSBIB
\Bibitem{SukShc24}
\by D.~D.~Sukhoverkhova, L.~N.~Shchur
\paper Influence of anisotropy on the study of the critical behavior of spin models by machine learning methods
\jour Pis'ma v Zh. \`Eksper. Teoret. Fiz.
\yr 2024
\vol 120
\issue 8
\pages 644--649
\mathnet{http://mi.mathnet.ru/jetpl7355}
\crossref{https://doi.org/10.31857/S0370274X24100239}
\edn{https://elibrary.ru/VVMLUH}
\transl
\jour JETP Letters
\yr 2024
\vol 120
\issue 8
\pages 616--621
\crossref{https://doi.org/10.1134/S0021364024603440}
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  • https://www.mathnet.ru/eng/jetpl/v120/i8/p644
  • This publication is cited in the following 3 articles:
    Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
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