Pushing the frontiers of density functionals by solving the fractional electron problem

Author:

Kirkpatrick James1ORCID,McMorrow Brendan1ORCID,Turban David H. P.1ORCID,Gaunt Alexander L.1ORCID,Spencer James S.1,Matthews Alexander G. D. G.1,Obika Annette1,Thiry Louis2,Fortunato Meire1,Pfau David1,Castellanos Lara Román1ORCID,Petersen Stig1ORCID,Nelson Alexander W. R.1,Kohli Pushmeet1,Mori-Sánchez Paula3,Hassabis Demis1ORCID,Cohen Aron J.14ORCID

Affiliation:

1. DeepMind, 6 Pancras Square, London N1C 4AG, UK.

2. Département d’informatique, ENS, CNRS, PSL University, Paris, France.

3. Departamento de Química and IFIMAC, UAM, 28049, Madrid, Spain.

4. Max Planck Institute for Solid State Research, 70569 Stuttgart, Germany.

Abstract

Improving DFT with deep learning In the past 30 years, density functional theory (DFT) has emerged as the most widely used electronic structure method to predict the properties of various systems in chemistry, biology, and materials science. Despite a long history of successes, state-of-the-art DFT functionals have crucial limitations. In particular, significant systematic errors are observed for charge densities involving mobile charges and spins. Kirkpatrick et al . developed a framework to train a deep neural network on accurate chemical data and fractional electron constraints (see the Perspective by Perdew). The resulting functional outperforms traditional functionals on thorough benchmarks for main-group atoms and molecules. The present work offers a solution to a long-standing critical problem in DFT and demonstrates the success of combining DFT with the modern machine-learning methodology. —YS

Publisher

American Association for the Advancement of Science (AAAS)

Subject

Multidisciplinary

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