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Engineering Topological Phases Guided by Statistical and Machine Learning Methods

ORAL

Abstract

The search for materials with topological properties is an ongoing effort. In this talk we will discuss our recent proposal [1] on a systematic statistical method supported by machine learning techniques that is capable of constructing topological models for a generic lattice without prior knowledge of the phase diagram.
By sampling tight-binding parameter vectors from a random distribution we obtain data sets that we label with the corresponding topological index. This labeled data is then analyzed to extract those parameters most relevant for the topological classification and to find their most likely values. We find that the marginal distributions of the parameters already define a topological model. Additional information is hidden in correlations between parameters.
We present as a proof of concept the prediction of the Haldane model as the prototypical topological insulator for the honeycomb lattice in Altland-Zirnbauer (AZ) class A. The algorithm is straightforwardly applicable to any other AZ class or lattice and could be generalized to interacting systems.

[1] Mertz, Valenti, arXiv:2008.11213 (2020)

Presenters

  • Thomas Mertz

    Goethe University Frankfurt, Goethe-Universität Frankfurt, Goethe University Frankfurt am Main

Authors

  • Thomas Mertz

    Goethe University Frankfurt, Goethe-Universität Frankfurt, Goethe University Frankfurt am Main

  • Roser Valenti

    Goethe University Frankfurt, Goethe-Universität Frankfurt, Goethe University Frankfurt am Main, ITP, Goethe University Frankfurt, Institute for Theoretical Physics, Goethe-Universitat Frankfurt, Goethe-University Frankfurt, Institut für Theoretische Physik, Goethe University Frankfurt