Literature DB >> 30351008

A Density Functional Tight Binding Layer for Deep Learning of Chemical Hamiltonians.

Haichen Li, Christopher Collins, Matteus Tanha, Geoffrey J Gordon, David J Yaron.   

Abstract

Current neural networks for predictions of molecular properties use quantum chemistry only as a source of training data. This paper explores models that use quantum chemistry as an integral part of the prediction process. This is done by implementing self-consistent-charge Density-Functional-Tight-Binding (DFTB) theory as a layer for use in deep learning models. The DFTB layer takes, as input, Hamiltonian matrix elements generated from earlier layers and produces, as output, electronic properties from self-consistent field solutions of the corresponding DFTB Hamiltonian. Backpropagation enables efficient training of the model to target electronic properties. Two types of input to the DFTB layer are explored, splines and feed-forward neural networks. Because overfitting can cause models trained on smaller molecules to perform poorly on larger molecules, regularizations are applied that penalize nonmonotonic behavior and deviation of the Hamiltonian matrix elements from those of the published DFTB model used to initialize the model. The approach is evaluated on 15 700 hydrocarbons by comparing the root-mean-square error in energy and dipole moment, on test molecules with eight heavy atoms, to the error from the initial DFTB model. When trained on molecules with up to seven heavy atoms, the spline model reduces the test error in energy by 60% and in dipole moments by 42%. The neural network model performs somewhat better, with error reductions of 67% and 59%, respectively. Training on molecules with up to four heavy atoms reduces performance, with both the spline and neural net models reducing the test error in energy by about 53% and in dipole by about 25%.

Entities:  

Year:  2018        PMID: 30351008     DOI: 10.1021/acs.jctc.8b00873

Source DB:  PubMed          Journal:  J Chem Theory Comput        ISSN: 1549-9618            Impact factor:   6.006


  8 in total

1.  Informing geometric deep learning with electronic interactions to accelerate quantum chemistry.

Authors:  Zhuoran Qiao; Anders S Christensen; Matthew Welborn; Frederick R Manby; Anima Anandkumar; Thomas F Miller
Journal:  Proc Natl Acad Sci U S A       Date:  2022-07-28       Impact factor: 12.779

2.  Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics.

Authors:  Guoqing Zhou; Nicholas Lubbers; Kipton Barros; Sergei Tretiak; Benjamin Nebgen
Journal:  Proc Natl Acad Sci U S A       Date:  2022-07-01       Impact factor: 12.779

3.  Machine Learning Force Fields.

Authors:  Oliver T Unke; Stefan Chmiela; Huziel E Sauceda; Michael Gastegger; Igor Poltavsky; Kristof T Schütt; Alexandre Tkatchenko; Klaus-Robert Müller
Journal:  Chem Rev       Date:  2021-03-11       Impact factor: 60.622

4.  Accurate and transferable multitask prediction of chemical properties with an atoms-in-molecules neural network.

Authors:  Roman Zubatyuk; Justin S Smith; Jerzy Leszczynski; Olexandr Isayev
Journal:  Sci Adv       Date:  2019-08-09       Impact factor: 14.136

5.  The ANI-1ccx and ANI-1x data sets, coupled-cluster and density functional theory properties for molecules.

Authors:  Justin S Smith; Roman Zubatyuk; Benjamin Nebgen; Nicholas Lubbers; Kipton Barros; Adrian E Roitberg; Olexandr Isayev; Sergei Tretiak
Journal:  Sci Data       Date:  2020-05-01       Impact factor: 6.444

6.  Unifying machine learning and quantum chemistry with a deep neural network for molecular wavefunctions.

Authors:  K T Schütt; M Gastegger; A Tkatchenko; K-R Müller; R J Maurer
Journal:  Nat Commun       Date:  2019-11-15       Impact factor: 14.919

7.  Curvature Constrained Splines for DFTB Repulsive Potential Parametrization.

Authors:  Akshay Krishna Ammothum Kandy; Eddie Wadbro; Bálint Aradi; Peter Broqvist; Jolla Kullgren
Journal:  J Chem Theory Comput       Date:  2021-02-19       Impact factor: 6.006

8.  Combining Machine Learning and Computational Chemistry for Predictive Insights Into Chemical Systems.

Authors:  John A Keith; Valentin Vassilev-Galindo; Bingqing Cheng; Stefan Chmiela; Michael Gastegger; Klaus-Robert Müller; Alexandre Tkatchenko
Journal:  Chem Rev       Date:  2021-07-07       Impact factor: 60.622

  8 in total

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