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research article

A smooth basis for atomistic machine learning

Bigi, Filippo  
•
Huguenin-Dumittan, Kevin K.
•
Ceriotti, Michele  
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December 21, 2022
Journal Of Chemical Physics

Machine learning frameworks based on correlations of interatomic positions begin with a discretized description of the density of other atoms in the neighborhood of each atom in the system. Symmetry considerations support the use of spherical harmonics to expand the angular dependence of this density, but there is, as of yet, no clear rationale to choose one radial basis over another. Here, we investigate the basis that results from the solution of the Laplacian eigenvalue problem within a sphere around the atom of interest. We show that this generates a basis of controllable smoothness within the sphere (in the same sense as plane waves provide a basis with controllable smoothness for a problem with periodic boundaries) and that a tensor product of Laplacian eigenstates also provides a smooth basis for expanding any higher-order correlation of the atomic density within the appropriate hypersphere. We consider several unsupervised metrics of the quality of a basis for a given dataset and show that the Laplacian eigenstate basis has a performance that is much better than some widely used basis sets and competitive with data-driven bases that numerically optimize each metric. Finally, we investigate the role of the basis in building models of the potential energy. In these tests, we find that a combination of the Laplacian eigenstate basis and target-oriented heuristics leads to equal or improved regression performance when compared to both heuristic and data-driven bases in the literature. We conclude that the smoothness of the basis functions is a key aspect of successful atomic density representations. (c) 2022 Author(s).

  • Details
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Type
research article
DOI
10.1063/5.0124363
Web of Science ID

WOS:000903182900005

Author(s)
Bigi, Filippo  
Huguenin-Dumittan, Kevin K.
Ceriotti, Michele  
Manolopoulos, David E.
Date Issued

2022-12-21

Publisher

AIP Publishing

Published in
Journal Of Chemical Physics
Volume

157

Issue

23

Article Number

234101

Subjects

Chemistry, Physical

•

Physics, Atomic, Molecular & Chemical

•

Chemistry

•

Physics

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
COSMO  
Available on Infoscience
January 30, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/194366
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