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Journal article

Addressing uncertainty in atomistic machine learning

From

Brown University1

Department of Energy Conversion and Storage, Technical University of Denmark2

Atomic Scale Materials Modelling, Department of Energy Conversion and Storage, Technical University of Denmark3

Machine-learning regression has been demonstrated to precisely emulate the potential energy and forces that are output from more expensive electronic-structure calculations. However, to predict new regions of the potential energy surface, an assessment must be made of the credibility of the predictions.

In this perspective, we address the types of errors that might arise in atomistic machine learning, the unique aspects of atomistic simulations that make machine-learning challenging, and highlight how uncertainty analysis can be used to assess the validity of machine-learning predictions. We suggest this will allow researchers to more fully use machine learning for the routine acceleration of large, high-accuracy, or extended-time simulations.

In our demonstrations, we use a bootstrap ensemble of neural network-based calculators, and show that the width of the ensemble can provide an estimate of the uncertainty when the width is comparable to that in the training data. Intriguingly, we also show that the uncertainty can be localized to specific atoms in the simulation, which may offer hints for the generation of training data to strategically improve the machine-learned representation.

Language: English
Publisher: The Royal Society of Chemistry
Year: 2017
Pages: 10978-10985
ISSN: 14639084 and 14639076
Types: Journal article
DOI: 10.1039/c7cp00375g
ORCIDs: Christensen, Rune and 0000-0003-2855-9482

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