Improving molecular force fields across configurational space by combining supervised and unsupervised machine learning.


Journal

The Journal of chemical physics
ISSN: 1089-7690
Titre abrégé: J Chem Phys
Pays: United States
ID NLM: 0375360

Informations de publication

Date de publication:
28 Mar 2021
Historique:
entrez: 3 4 2021
pubmed: 4 4 2021
medline: 4 4 2021
Statut: ppublish

Résumé

The training set of atomic configurations is key to the performance of any Machine Learning Force Field (MLFF) and, as such, the training set selection determines the applicability of the MLFF model for predictive molecular simulations. However, most atomistic reference datasets are inhomogeneously distributed across configurational space (CS), and thus, choosing the training set randomly or according to the probability distribution of the data leads to models whose accuracy is mainly defined by the most common close-to-equilibrium configurations in the reference data. In this work, we combine unsupervised and supervised ML methods to bypass the inherent bias of the data for common configurations, effectively widening the applicability range of the MLFF to the fullest capabilities of the dataset. To achieve this goal, we first cluster the CS into subregions similar in terms of geometry and energetics. We iteratively test a given MLFF performance on each subregion and fill the training set of the model with the representatives of the most inaccurate parts of the CS. The proposed approach has been applied to a set of small organic molecules and alanine tetrapeptide, demonstrating an up to twofold decrease in the root mean squared errors for force predictions on non-equilibrium geometries of these molecules. Furthermore, our ML models demonstrate superior stability over the default training approaches, allowing reliable study of processes involving highly out-of-equilibrium molecular configurations. These results hold for both kernel-based methods (sGDML and GAP/SOAP models) and deep neural networks (SchNet model).

Identifiants

pubmed: 33810678
doi: 10.1063/5.0035530
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

124102

Auteurs

Gregory Fonseca (G)

Department of Physics and Materials Science, University of Luxembourg, L-1511 Luxembourg, Luxembourg.

Igor Poltavsky (I)

Department of Physics and Materials Science, University of Luxembourg, L-1511 Luxembourg, Luxembourg.

Valentin Vassilev-Galindo (V)

Department of Physics and Materials Science, University of Luxembourg, L-1511 Luxembourg, Luxembourg.

Alexandre Tkatchenko (A)

Department of Physics and Materials Science, University of Luxembourg, L-1511 Luxembourg, Luxembourg.

Classifications MeSH