Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session W39: Machine Learning for Quantum Matter VI
8:00 AM–10:12 AM,
Friday, March 6, 2020
Room: 703
Sponsoring
Units:
DCOMP GDS DMP
Chair: Giacomo Torlai, Simons Foundation
Abstract: W39.00009 : Tight-binding deep learning approach to band structures calculations
View Presentation
Abstract
Presenter:
Florian Sapper
(Max Planck Inst for Sci Light)
Authors:
Florian Sapper
(Max Planck Inst for Sci Light)
Vittorio Peano
(Max Planck Inst for Sci Light)
Florian Marquardt
(Max Planck Inst for Sci Light)
In this talk we present a numerical method for band structure calculations that is based on deep neural networks (NNs). In our approach, the NN does not predict the band structure directly but rather makes it easily accessible via the parameters of a tight-binding model. This is, thus, an example of so-called known-operator learning.
Our tight-binding learning NN goes beyond other existing NN based approaches to band structure calculations in that: (i) It does not focus on a few selected model parameters but rather provides a full mapping from arbitrary unit cell geometry to bands. (ii) It allows to better interpret the network's predictions. (iii) It gives access to the space-group symmetries of the underlying normal modes (especially important for topological systems).
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