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Unsupervised and supervised learning of interacting topological phases from single-particle correlation functions

Authors :
Tibaldi, Simone
Magnifico, Giuseppe
Vodola, Davide
Ercolessi, Elisa
Source :
SciPost Phys. 14, 005 (2023)
Publication Year :
2022

Abstract

The recent advances in machine learning algorithms have boosted the application of these techniques to the field of condensed matter physics, in order e.g. to classify the phases of matter at equilibrium or to predict the real-time dynamics of a large class of physical models. Typically in these works, a machine learning algorithm is trained and tested on data coming from the same physical model. Here we demonstrate that unsupervised and supervised machine learning techniques are able to predict phases of a non-exactly solvable model when trained on data of a solvable model. In particular, we employ a training set made by single-particle correlation functions of a non-interacting quantum wire and by using principal component analysis, k-means clustering, and convolutional neural networks we reconstruct the phase diagram of an interacting superconductor. We show that both the principal component analysis and the convolutional neural networks trained on the data of the non-interacting model can identify the topological phases of the interacting model with a high degree of accuracy. Our findings indicate that non-trivial phases of matter emerging from the presence of interactions can be identified by means of unsupervised and supervised techniques applied to data of non-interacting systems.<br />Comment: 9 pages, 7 figures. Final version

Details

Database :
arXiv
Journal :
SciPost Phys. 14, 005 (2023)
Publication Type :
Report
Accession number :
edsarx.2202.09281
Document Type :
Working Paper
Full Text :
https://doi.org/10.21468/SciPostPhys.14.1.005