Affiliation:
1. Istituto Nazionale di Fisica Nucleare Sezione di Bologna
2. University of Bologna
3. National Institute for Nuclear Physics Padova Division
4. University of Padua
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, t-distributed stochastic neighbor embedding 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. 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.
Funder
European Commission
Horizon 2020
Instituto Nazionale di Fisica Nucleare
Ministero dell’Istruzione, dell’Università e della Ricerca
Subject
General Physics and Astronomy
Cited by
15 articles.
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