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Machine learning the molecular dipole moment with atomic partial charges and atomic dipoles

ORAL

Abstract

The gas-phase molecular dipole moment is a central quantity in chemistry. It is essential in predicting molecular infrared and sum-frequency-generation spectra, as well as in describing long-range interactions. Here we fit a machine learning model on an accurate quantum chemical reference dipole set. We represent the dipole with a physically-inspired machine learning model that captures the two distinct physical effects contributing to molecular polarization: Local atomic polarization is captured within the symmetry-adapted Gaussian process regression (SA-GPR) framework, while long-range movement of charge is captured by assigning a scalar charge to each atom. Not only does the model achieve state-of-the-art interpolation and extrapolation performance on the standard QM9 reference set, it also gives useful insights into the physics of polarization and charge transfer for a variety of challenging test examples. The results show how transparency and physical interpretability can aid not only the understanding of a machine learning model, but allow it to achieve higher accuracy as well. Extensions to the condensed phase, within the context of the modern theory of polarization, are discussed.

Presenters

  • Max Veit

    Institute of Materials, Swiss Federal Institute of Technology in Lausanne (EPFL), Switzerland

Authors

  • Max Veit

    Institute of Materials, Swiss Federal Institute of Technology in Lausanne (EPFL), Switzerland

  • David` Wilkins

    Queen's University Belfast, Belfast, UK

  • Yang Yang

    Chemistry and Chemical Biology, Cornell University, Department of Chemistry and Chemical Biology, Cornell University, Department of Chemistry and Chemical Biology, Cornell University, Ithaca, NY

  • Robert Distasio

    Chemistry and Chemical Biology, Cornell University, Department of Chemistry and Chemical Biology, Cornell University, Cornell University, Department of Chemistry and Chemical Biology, Cornell University, Ithaca, NY

  • Michele Ceriotti

    Ecole polytechnique federale de Lausanne, Ecole Polytechnique Federale de Lausanne, Institute of Materials, Swiss Federal Institute of Technology in Lausanne (EPFL), Switzerland, École Polytechnique Federale de Lausanne, Laboratory of Computational Science and Modeling, Institut des Matériaux, École Polytechnique Fédérale de Lausanne