Extending machine learning beyond interatomic potentials for predicting molecular properties

被引:0
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作者
Nikita Fedik
Roman Zubatyuk
Maksim Kulichenko
Nicholas Lubbers
Justin S. Smith
Benjamin Nebgen
Richard Messerly
Ying Wai Li
Alexander I. Boldyrev
Kipton Barros
Olexandr Isayev
Sergei Tretiak
机构
[1] Los Alamos National Laboratory,Theoretical Division
[2] Los Alamos National Laboratory,Center for Nonlinear Studies
[3] Utah State University,Department of Chemistry and Biochemistry
[4] Carnegie Mellon University,Department of Chemistry
[5] Los Alamos National Laboratory,Computer, Computational, and Statistical Sciences Division
[6] NVIDIA,Center for Integrated Nanotechnologies
[7] Los Alamos National Laboratory,undefined
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摘要
Machine learning (ML) is becoming a method of choice for modelling complex chemical processes and materials. ML provides a surrogate model trained on a reference dataset that can be used to establish a relationship between a molecular structure and its chemical properties. This Review highlights developments in the use of ML to evaluate chemical properties such as partial atomic charges, dipole moments, spin and electron densities, and chemical bonding, as well as to obtain a reduced quantum-mechanical description. We overview several modern neural network architectures, their predictive capabilities, generality and transferability, and illustrate their applicability to various chemical properties. We emphasize that learned molecular representations resemble quantum-mechanical analogues, demonstrating the ability of the models to capture the underlying physics. We also discuss how ML models can describe non-local quantum effects. Finally, we conclude by compiling a list of available ML toolboxes, summarizing the unresolved challenges and presenting an outlook for future development. The observed trends demonstrate that this field is evolving towards physics-based models augmented by ML, which is accompanied by the development of new methods and the rapid growth of user-friendly ML frameworks for chemistry.
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页码:653 / 672
页数:19
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