Machine learning the derivative discontinuity of density-functional theory

Gedeon, Johannes and Schmidt, Jonathan and Hodgson, Matthew J P and Wetherell, Jack and Benavides-Riveros, Carlos L and Marques, Miguel A L (2022) Machine learning the derivative discontinuity of density-functional theory. Machine Learning: Science and Technology, 3 (1). 015011. ISSN 2632-2153

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Abstract

Machine learning is a powerful tool to design accurate, highly non-local, exchange-correlation functionals for density functional theory. So far, most of those machine learned functionals are trained for systems with an integer number of particles. As such, they are unable to reproduce some crucial and fundamental aspects, such as the explicit dependency of the functionals on the particle number or the infamous derivative discontinuity at integer particle numbers. Here we propose a solution to these problems by training a neural network as the universal functional of density-functional theory that (a) depends explicitly on the number of particles with a piece-wise linearity between the integer numbers and (b) reproduces the derivative discontinuity of the exchange-correlation energy. This is achieved by using an ensemble formalism, a training set containing fractional densities, and an explicitly discontinuous formulation.

Item Type: Article
Subjects: Open Archive Press > Multidisciplinary
Depositing User: Unnamed user with email support@openarchivepress.com
Date Deposited: 13 Jul 2023 04:06
Last Modified: 28 May 2024 05:12
URI: http://library.2pressrelease.co.in/id/eprint/1712

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