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Machine-Learning Coupled Cluster Properties through a Density Tensor Representation

Authors :
Benjamin G. Peyton
T. Daniel Crawford
Ruhee D'Cunha
Johannes T. Margraf
Connor Briggs
Source :
The Journal of Physical Chemistry A. 124:4861-4871
Publication Year :
2020
Publisher :
American Chemical Society (ACS), 2020.

Abstract

The introduction of machine-learning (ML) algorithms to quantum mechanics enables rapid evaluation of otherwise intractable expressions at the cost of prior training on appropriate benchmarks. Many computational bottlenecks in the evaluation of accurate electronic structure theory could potentially benefit from the application of such models, from reducing the complexity of the underlying wave function parameter space to circumventing the complications of solving the electronic Schrödinger equation entirely. Applications of ML to electronic structure have thus far been focused on learning molecular properties (mainly the energy) from geometric representations. While this line of study has been quite successful, highly accurate models typically require a “big data” approach with thousands of train- ing data points. Herein, we propose a general, systematically improvable scheme for wave function-based ML of arbitrary molecular properties, inspired by the underlying equations that govern the canonical approach to computing the properties. To this end, we combine the established ML machinery of the t-amplitude tensor representation with a new reduced density matrix representation. The resulting model provides quantitative accuracy in both the electronic energy and dipoles of small molecules using only a few dozen training points per system.

Details

ISSN :
15205215 and 10895639
Volume :
124
Database :
OpenAIRE
Journal :
The Journal of Physical Chemistry A
Accession number :
edsair.doi.dedup.....4b09343f95fdfa51fbf3ee563bb16321
Full Text :
https://doi.org/10.1021/acs.jpca.0c02804