| Literature DB >> 34196559 |
Maksim Kulichenko1,2, Justin S Smith1,3, Benjamin Nebgen1, Ying Wai Li4, Nikita Fedik1,2, Alexander I Boldyrev2, Nicholas Lubbers4, Kipton Barros1,3, Sergei Tretiak1,3,5.
Abstract
Machine learning (ML) is quickly becoming a premier tool for modeling chemical processes and materials. ML-based force fields, trained on large data sets of high-quality electron structure calculations, are particularly attractive due their unique combination of computational efficiency and physical accuracy. This Perspective summarizes some recent advances in the development of neural network-based interatomic potentials. Designing high-quality training data sets is crucial to overall model accuracy. One strategy is active learning, in which new data are automatically collected for atomic configurations that produce large ML uncertainties. Another strategy is to use the highest levels of quantum theory possible. Transfer learning allows training to a data set of mixed fidelity. A model initially trained to a large data set of density functional theory calculations can be significantly improved by retraining to a relatively small data set of expensive coupled cluster theory calculations. These advances are exemplified by applications to molecules and materials.Year: 2021 PMID: 34196559 DOI: 10.1021/acs.jpclett.1c01357
Source DB: PubMed Journal: J Phys Chem Lett ISSN: 1948-7185 Impact factor: 6.475