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Atomic-Scale Representation and Statistical Learning of Tensorial Properties

Atomic-Scale Representation and Statistical Learning of Tensorial Properties

  • Andrea Grisafi
    Andrea Grisafi
    Laboratory of Computational Science and Modeling, IMX, École Polytechnique Fédérale de Lausanne, 1015 Lausanne, Switzerland
  • David M. Wilkins
    David M. Wilkins
    Laboratory of Computational Science and Modeling, IMX, École Polytechnique Fédérale de Lausanne, 1015 Lausanne, Switzerland
  • Michael J. Willatt
    Michael J. Willatt
    Laboratory of Computational Science and Modeling, IMX, École Polytechnique Fédérale de Lausanne, 1015 Lausanne, Switzerland
  • , and 
  • Michele Ceriotti *
    Michele Ceriotti
    Laboratory of Computational Science and Modeling, IMX, École Polytechnique Fédérale de Lausanne, 1015 Lausanne, Switzerland
    *E-mail: [email protected]
DOI: 10.1021/bk-2019-1326.ch001
  • Free to Read
Publication Date (Web):November 20, 2019
Copyright © 2019 American Chemical Society. This publication is available under these Terms of Use.
Machine Learning in Chemistry: Data-Driven Algorithms, Learning Systems, and Predictions
Chapter 1pp 1-21
ACS Symposium SeriesVol. 1326
ISBN13: 9780841235052eISBN: 9780841235045

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Abstract

This chapter discusses the importance of incorporating three-dimensional symmetries in the context of statistical learning models geared towards the interpolation of the tensorial properties of atomic-scale structures. We focus on Gaussian process regression, and in particular on the construction of structural representations, and the associated kernel functions, that are endowed with the geometric covariance properties compatible with those of the learning targets. We summarize the general formulation of such a symmetry-adapted Gaussian process regression model, and how it can be implemented based on a scheme that generalizes the popular smooth overlap of atomic positions representation. We give examples of the performance of this framework when learning the polarizability, the hyperpolarizability, and the ground-state electron density of a molecule.

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