Literature DB >> 29448449

Unsupervised machine learning account of magnetic transitions in the Hubbard model.

Kelvin Ch'ng1, Nick Vazquez1, Ehsan Khatami1.   

Abstract

We employ several unsupervised machine learning techniques, including autoencoders, random trees embedding, and t-distributed stochastic neighboring ensemble (t-SNE), to reduce the dimensionality of, and therefore classify, raw (auxiliary) spin configurations generated, through Monte Carlo simulations of small clusters, for the Ising and Fermi-Hubbard models at finite temperatures. Results from a convolutional autoencoder for the three-dimensional Ising model can be shown to produce the magnetization and the susceptibility as a function of temperature with a high degree of accuracy. Quantum fluctuations distort this picture and prevent us from making such connections between the output of the autoencoder and physical observables for the Hubbard model. However, we are able to define an indicator based on the output of the t-SNE algorithm that shows a near perfect agreement with the antiferromagnetic structure factor of the model in two and three spatial dimensions in the weak-coupling regime. t-SNE also predicts a transition to the canted antiferromagnetic phase for the three-dimensional model when a strong magnetic field is present. We show that these techniques cannot be expected to work away from half filling when the "sign problem" in quantum Monte Carlo simulations is present.

Year:  2018        PMID: 29448449     DOI: 10.1103/PhysRevE.97.013306

Source DB:  PubMed          Journal:  Phys Rev E        ISSN: 2470-0045            Impact factor:   2.529


  3 in total

1.  Magnetic State Generation using Hamiltonian Guided Variational Autoencoder with Spin Structure Stabilization.

Authors:  Hee Young Kwon; Han Gyu Yoon; Sung Min Park; Doo Bong Lee; Jun Woo Choi; Changyeon Won
Journal:  Adv Sci (Weinh)       Date:  2021-03-24       Impact factor: 16.806

2.  An innovative magnetic state generator using machine learning techniques.

Authors:  H Y Kwon; N J Kim; C K Lee; H G Yoon; J W Choi; C Won
Journal:  Sci Rep       Date:  2019-11-13       Impact factor: 4.379

3.  A sampling-guided unsupervised learning method to capture percolation in complex networks.

Authors:  Sayat Mimar; Gourab Ghoshal
Journal:  Sci Rep       Date:  2022-03-09       Impact factor: 4.379

  3 in total

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