Welcome to the new version of CaltechAUTHORS. Login is currently restricted to library staff. If you notice any issues, please email coda@library.caltech.edu
Published September 28, 2020 | Published + Submitted + Supplemental Material
Journal Article Open

OrbNet: Deep learning for quantum chemistry using symmetry-adapted atomic-orbital features

Abstract

We introduce a machine learning method in which energy solutions from the Schrödinger equation are predicted using symmetry adapted atomic orbital features and a graph neural-network architecture. OrbNet is shown to outperform existing methods in terms of learning efficiency and transferability for the prediction of density functional theory results while employing low-cost features that are obtained from semi-empirical electronic structure calculations. For applications to datasets of drug-like molecules, including QM7b-T, QM9, GDB-13-T, DrugBank, and the conformer benchmark dataset of Folmsbee and Hutchison [Int. J. Quantum Chem. (published online) (2020)], OrbNet predicts energies within chemical accuracy of density functional theory at a computational cost that is 1000-fold or more reduced.

Additional Information

© 2020 Published under license by AIP Publishing. Submitted: 16 July 2020; Accepted: 7 September 2020; Published Online: 25 September 2020. The authors thank Lixue Sherry Cheng for providing geometries for the DrugBank-T dataset and Anders Christensen for helpful comments on the manuscript. Z.Q. acknowledges the graduate research funding from Caltech. T.F.M. and A.A. acknowledge partial support from the Caltech DeLogi fund, and A.A. acknowledges support from a Caltech Bren professorship.

Attached Files

Published - 5.0021955.pdf

Submitted - 2007.08026.pdf

Supplemental Material - drugbank-t_geometries.zip

Supplemental Material - splits.zip

Files

drugbank-t_geometries.zip
Files (4.8 MB)
Name Size Download all
md5:b70f3442b4d96355f9ff9ef01bc39135
1.6 MB Preview Download
md5:31faeb5ac394b4b86287909aea0d795d
2.0 MB Preview Download
md5:896774c4175b52c854afd931bc766cd7
759.8 kB Preview Download
md5:27299f9dc390ae2277e2702622444891
309.0 kB Preview Download

Additional details

Created:
August 19, 2023
Modified:
October 20, 2023