Unsupervised learning of topological phase transitions using the Calinski-Harabaz index

被引:30
|
作者
Wang, Jielin [1 ]
Zhang, Wanzhou [2 ]
Hua, Tian [1 ]
Wei, Tzu-Chieh [3 ]
机构
[1] Taiyuan Univ Technol, Coll Informat & Comp, Taiyuan 030024, Peoples R China
[2] Taiyuan Univ Technol, Coll Phys & Optoelect, Taiyuan 030024, Peoples R China
[3] SUNY Stony Brook, CN Yang Inst Theoret Phys, Dept Phys & Astron, Stony Brook, NY 11794 USA
来源
PHYSICAL REVIEW RESEARCH | 2021年 / 3卷 / 01期
基金
美国国家科学基金会;
关键词
63;
D O I
10.1103/PhysRevResearch.3.013074
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Machine learning methods have been recently applied to learning phases of matter and transitions between them. Of particular interest is the topological phase transition, such as in the XY model, whose critical points can be difficult to be obtained by using unsupervised learning, such as the principal component analysis. Recently, the authors of [Nat. Phys. 15, 790 (2019)] employed the diffusion map method for identifying topological orders and were able to determine the Berezinskii-Kosterlitz-Thouless (BKT) phase transition of the XY model, specifically via the intersection of the average cluster distance (D) over bar and the within-cluster dispersion parameter (sigma) over bar (when the different clusters vary from separation to mixing together). However, sometimes it is not easy to find the intersection if (D) over bar or (sigma) over bar does not change too much due to topological constraint. In this paper, we propose to use the Calinski-Harabaz (ch) index, defined roughly as the ratio (D) over bar / (sigma) over bar, to determine the critical points at which the ch index reaches a maximum or minimum value or jumps sharply. We examine the ch index in several statistical models, including ones that contain a BKT phase transition. For the Ising model, the peaks of the quantity ch or its components are consistent with the position of the specific-heat maximum. For the XY model, both on the square and on the honeycomb lattices, our results of the ch index show the convergence of the peaks over a range of parameters epsilon/epsilon(0) in the Gaussian kernel. We also examine the generalized XY model with q = 2 and q = 8 and study the phase transition using the fractional 1/2-vortex or 1/8-vortex constraint, respectively. The global phase diagram can be obtained by our method, which does not use the label of configuration needed by supervised learning, nor a crossing from two curves (D) over bar and (sigma) over bar. Our method is, thus, useful to both topological and nontopological phase transitions and can achieve accuracy as good as supervised learning methods previously used in these models and may be used for searching phases from experimental data.
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页数:14
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共 44 条
  • [1] Unsupervised identification of topological phase transitions using predictive models
    Greplova, Eliska
    Valenti, Agnes
    Boschung, Gregor
    Schafer, Frank
    Lorch, Niels
    Huber, Sebastian D.
    [J]. NEW JOURNAL OF PHYSICS, 2020, 22 (04):
  • [2] Topological quantum phase transitions retrieved through unsupervised machine learning
    Che, Yanming
    Gneiting, Clemens
    Liu, Tao
    Nori, Franco
    [J]. PHYSICAL REVIEW B, 2020, 102 (13)
  • [3] Unsupervised machine learning of topological phase transitions from experimental data
    Kaeming, Niklas
    Dawid, Anna
    Kottmann, Korbinian
    Lewenstein, Maciej
    Sengstock, Klaus
    Dauphin, Alexandre
    Weitenberg, Christof
    [J]. MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2021, 2 (03):
  • [4] Unsupervised learning of interacting topological and symmetry-breaking phase transitions
    Kuo, En-Jui
    Dehghani, Hossein
    [J]. PHYSICAL REVIEW B, 2022, 105 (23)
  • [5] Unsupervised learning of topological phase diagram using topological data analysis
    Park, Sungjoon
    Hwang, Yoonseok
    Yang, Bohm-Jung
    [J]. PHYSICAL REVIEW B, 2022, 105 (19)
  • [6] Deep learning of topological phase transitions from entanglement aspects: An unsupervised way
    Tsai, Yuan-Hong
    Chiu, Kuo-Feng
    Lai, Yong-Cheng
    Su, Kuan-Jung
    Yang, Tzu-Pei
    Cheng, Tsung-Pao
    Huang, Guang-Yu
    Chung, Ming-Chiang
    [J]. PHYSICAL REVIEW B, 2021, 104 (16)
  • [7] Discovering phase transitions with unsupervised learning
    Wang, Lei
    [J]. PHYSICAL REVIEW B, 2016, 94 (19)
  • [8] Phase transitions in optimal unsupervised learning
    Buhot, A
    Gordon, MB
    [J]. PHYSICAL REVIEW E, 1998, 57 (03): : 3326 - 3333
  • [9] Identifying Topological Phase Transitions in Experiments Using Manifold Learning
    Lustig, Eran
    Yair, Or
    Talmon, Ronen
    Segev, Mordechai
    [J]. PHYSICAL REVIEW LETTERS, 2020, 125 (12)
  • [10] Unsupervised Machine Learning of Quantum Phase Transitions Using Diffusion Maps
    Lidiak, Alexander
    Gong, Zhexuan
    [J]. PHYSICAL REVIEW LETTERS, 2020, 125 (22)