4.2 Article

The critical temperature of the 2D-Ising model through deep learning autoencoders

期刊

EUROPEAN PHYSICAL JOURNAL B
卷 93, 期 12, 页码 -

出版社

SPRINGER
DOI: 10.1140/epjb/e2020-100506-5

关键词

Statistical and Nonlinear Physics

资金

  1. Universita di Pisa within the CRUICARE Agreement
  2. Horizon 2020 of the European Commission research and innovation programme VI-SEEM [675121]
  3. Horizon 2020 of the European Commission research and innovation programme OpenSESAME [730943]
  4. Horizon 2020 of the European Commission research and innovation programme Tips in SCQFT [791122]
  5. OpenSESAME project
  6. Horizon 2020 of the European Commission research and innovation programme HPC-LEAP under Marie Sklodowska Curie grant [642069]
  7. Horizon 2020 of the European Commission research and innovation programme PRACE-5IP [730913]
  8. Marie Curie Actions (MSCA) [791122] Funding Source: Marie Curie Actions (MSCA)

向作者/读者索取更多资源

We investigate deep learning autoencoders for the unsupervised recognition of phase transitions in physical systems formulated on a lattice. We focus our investigation on the 2-dimensional ferromagnetic Ising model and then test the application of the autoencoder on the anti-ferromagnetic Ising model. We use spin configurations produced for the 2-dimensional ferromagnetic and anti-ferromagnetic Ising model in zero external magnetic field. For the ferromagnetic Ising model, we study numerically the relation between one latent variable extracted from the autoencoder to the critical temperature T-c. The proposed autoencoder reveals the two phases, one for which the spins are ordered and the other for which spins are disordered, reflecting the restoration of the Z(2) symmetry as the temperature increases. We provide a finite volume analysis for a sequence of increasing lattice sizes. For the largest volume studied, the transition between the two phases occurs very close to the theoretically extracted critical temperature. We define as a quasiorder parameter the absolute average latent variable (z) over tilde, which enables us to predict the critical temperature. One can define a latent susceptibility and use it to quantify the value of the critical temperature T-c(L) at different lattice sizes and that these values suffer from only small finite scaling effects. We demonstrate that T-c(L) extrapolates to the known theoretical value as L -> infinity suggesting that the autoencoder can also be used to extract the critical temperature of the phase transition to an adequate precision. Subsequently, we test the application of the autoencoder on the anti-ferromagnetic Ising model, demonstrating that the proposed network can detect the phase transition successfully in a similar way.

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