Interpretable and unsupervised phase classification

被引:25
作者
Arnold, Julian [1 ]
Schaefer, Frank [1 ]
Zonda, Martin [2 ,3 ]
Lode, Axel U. J. [2 ]
机构
[1] Univ Basel, Dept Phys, Klingelbergstr 82, CH-4056 Basel, Switzerland
[2] Albert Ludwigs Univ Freiburg, Inst Phys, Hermann Herder Str 3, D-79104 Freiburg, Germany
[3] Charles Univ Prague, Fac Math & Phys, Dept Condensed Matter Phys, KE Karlovu 5, CZ-12116 Prague 2, Czech Republic
来源
PHYSICAL REVIEW RESEARCH | 2021年 / 3卷 / 03期
基金
奥地利科学基金会;
关键词
FALICOV-KIMBALL MODEL; MEAN-FIELD THEORY; ELECTRON CORRELATIONS; METAL TRANSITIONS; NETWORKS;
D O I
10.1103/PhysRevResearch.3.033052
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Fully automated classification methods that provide direct physical insights into phase diagrams are of current interest. Interpretable, i.e., fully explainable, methods are desired for which we understand why they yield a given phase classification. Ideally, phase classification methods should also be unsupervised. That is, they should not require prior labeling or knowledge of the phases of matter to be characterized. Here, we demonstrate an unsupervised machine-learning method for phase classification, which is rendered interpretable via an analytical derivation of the functional relationship between its optimal predictions and the input data. Based on these findings, we propose and apply an alternative, physically-motivated, data-driven scheme, which relies on the difference between mean input features. This mean-based method does not rely on any predictive model and is thus computationally cheap and directly explainable. As an example, we consider the physically rich ground-state phase diagram of the spinless Falicov-Kimball model.
引用
收藏
页数:16
相关论文
共 100 条
[1]  
[Anonymous], 2016, Physical Review B, DOI DOI 10.1103/PHYSREVB.94.195105
[2]   Interaction-Tuned Anderson versus Mott Localization [J].
Antipov, Andrey E. ;
Javanmard, Younes ;
Ribeiro, Pedro ;
Kirchner, Stefan .
PHYSICAL REVIEW LETTERS, 2016, 117 (14)
[3]   Nonequilibrium dynamical mean-field theory and its applications [J].
Aoki, Hideo ;
Tsuji, Naoto ;
Eckstein, Martin ;
Kollar, Marcus ;
Oka, Takashi ;
Werner, Philipp .
REVIEWS OF MODERN PHYSICS, 2014, 86 (02) :779-837
[4]  
Arnold J., 2020, INTERPRETABLE UNSUPE
[5]   Unsupervised learning using topological data augmentation [J].
Balabanov, Oleksandr ;
Granath, Mats .
PHYSICAL REVIEW RESEARCH, 2020, 2 (01)
[6]  
Bengio Y, 2011, LECT NOTES ARTIF INT, V6925, P18, DOI 10.1007/978-3-642-24412-4_3
[7]   Towards novel insights in lattice field theory with explainable machine learning [J].
Bluecher, Stefan ;
Kades, Lukas ;
Pawlowski, Jan M. ;
Strodthoff, Nils ;
Urban, Julian M. .
PHYSICAL REVIEW D, 2020, 101 (09)
[8]  
Bohrdt A., ARXIV201211586
[9]   Classifying snapshots of the doped Hubbard model with machine learning [J].
Bohrdt, Annabelle ;
Chiu, Christie S. ;
Jig, Geoffrey ;
Xu, Muqing ;
Greif, Daniel ;
Greiner, Markus ;
Demler, Eugene ;
Grusdt, Fabian ;
Knap, Michael .
NATURE PHYSICS, 2019, 15 (09) :921-924
[10]  
Briggs W L, 1995, DFT OWNERS MANUAL DI