• Open Access

Deep learning of phase transitions for quantum spin chains from correlation aspects

Ming-Chiang Chung, Guang-Yu Huang, Ian P. McCulloch, and Yuan-Hong Tsai
Phys. Rev. B 107, 214451 – Published 29 June 2023

Abstract

Using machine learning (ML) to recognize different phases of matter and to infer the entire phase diagram has proven to be an effective tool given a large dataset. In our previous proposals, we have successfully explored phase transitions for topological phases of matter at low dimensions either in a supervised or an unsupervised learning protocol with the assistance of quantum-information-related quantities. In this work, we adopt our previous ML procedures to study quantum phase transitions of magnetism systems such as the XY and XXZ spin chains by using spin-spin correlation functions as the input data. We find that our proposed approach not only maps out the phase diagrams with accurate phase boundaries, but also indicates some features that have not been observed in the field of machine learning before. In particular, we define so-called relevant correlation functions to some corresponding phases that can always distinguish between those and their neighbors. Based on the unsupervised learning protocol we proposed [Phys. Rev. B 104, 165108 (2021)], the reduced latent representations of the inputs combined with the clustering algorithm show the connectedness or disconnectedness between neighboring clusters (phases) just corresponding to the continuous or disrupt quantum phase transition, respectively. This property reminds us of the behavior of order parameters. Moreover, in the silhouette analysis we show that the ferromagnetic states in the XXZ model with various anisotropy parameters correspond to almost the same silhouette value, while the critical or antiferromagnetic states behave quite differently. The analysis further indicates that the minima of silhouette values are close to the phase-transition points, showing strong positive correlation. These results again justify the usefulness of our proposed ML procedures, and they move us a step further toward understanding the relation between ML and quantum phase transitions from correlation function aspects.

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  • Received 9 February 2023
  • Accepted 13 June 2023

DOI:https://doi.org/10.1103/PhysRevB.107.214451

Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article's title, journal citation, and DOI. Open access publication funded by the Max Planck Society.

Published by the American Physical Society

Physics Subject Headings (PhySH)

Condensed Matter, Materials & Applied PhysicsStatistical Physics & Thermodynamics

Authors & Affiliations

Ming-Chiang Chung1,2,3,4,*, Guang-Yu Huang2, Ian P. McCulloch5, and Yuan-Hong Tsai6,†

  • 1Max Planck Institute for the Physics of Complex Systems, Nöthnitze Straße 38, 01187 Dresden, Germany
  • 2Physics Department, National Chung-Hsing University, Taichung 40227, Taiwan, Republic of China
  • 3National Center for Theoretical Sciences, Physics Divison, Taipei 10617, Taiwan, Republic of China
  • 4Physics Department, Northeastern University, 360 Huntington Avenue, Boston, Massachusetts 02115, USA
  • 5School of Mathematics and Physics, The University of Queensland, St. Lucia, QLD 4027, Australia
  • 6AI Foundation, Taipei 106, Taiwan, Republic of China

  • *mingchiangha@phys.nchu.edu.tw
  • yhong.tsai@gmail.com

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Issue

Vol. 107, Iss. 21 — 1 June 2023

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