Machine learning topological phases in real space

01/07/2019
by   N. L. Holanda, et al.
0

We develop a supervised machine learning algorithm that is able to learn topological phases for finite systems in real space. The algorithm employs diagonalization in real space together with any supervised learning algorithm to learn topological phases through an eigenvector-ensembling procedure. We employ our method to successfully recover topological phase diagrams of Su-Schrieffer-Heeger models from data in real space using decision trees and show how entropy-based criteria can be used to retrieve topological information from local features. Our results demonstrate that learning topological phases in real space may be a viable alternative to momentum space computations, specially in cases when computing topological invariants in momentum space is impossible or unfeasible (e.g. disordered systems).

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