Abstract

In recent years, machine learning models, chiefly deep neural networks, have revealed suited to learn accurate energy-density functionals from data. However, problematic instabilities have been shown to occur in the search of ground-state density profiles via energy minimization. Indeed, any small noise can lead astray from realistic profiles, causing the failure of the learned functional and, hence, strong violations of the variational property. In this article, we employ variational autoencoders (VAEs) to build a compressed, flexible, and regular representation of the ground-state density profiles of various quantum models. Performing energy minimization in this compressed space allows us to avoid both numerical instabilities and variational biases due to excessive constraints. Our tests are performed on one-dimensional single-particle models from the literature in the field and, notably, on a three-dimensional disordered potential. In all cases, the ground-state energies are estimated with errors below the chemical accuracy and the density profiles are accurately reproduced without numerical artifacts. Furthermore, we show that it is possible to perform transfer learning, applying pre-trained VAEs to different potentials.

Details

Title
Solving deep-learning density functional theory via variational autoencoders
Author
Costa, Emanuele 1   VIAFID ORCID Logo  ; Scriva, Giuseppe 2   VIAFID ORCID Logo  ; Pilati, Sebastiano 2   VIAFID ORCID Logo 

 Physics Division, School of Science and Technology, University of Camerino , Via Madonna delle Carceri 9, 62032 Camerino (MC), Italy; INFN Sezione di Perugia , Via A. Pascoli, 06123 Perugia, Italy; Institut de Ciències del Cosmos (ICCUB), Universitat de Barcelona (UB) , c. Martí i Franqués 1, 08028 Barcelona, Spain 
 Physics Division, School of Science and Technology, University of Camerino , Via Madonna delle Carceri 9, 62032 Camerino (MC), Italy; INFN Sezione di Perugia , Via A. Pascoli, 06123 Perugia, Italy 
First page
035015
Publication year
2024
Publication date
Sep 2024
Publisher
IOP Publishing
e-ISSN
26322153
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
3082617458
Copyright
© 2024 The Author(s). Published by IOP Publishing Ltd. This work is published under http://creativecommons.org/licenses/by/4.0 (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.