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  Extrapolation to complete basis-set limit in density-functional theory by quantile random-forest models

Speckhard, D., Carbogno, C., Ghiringhelli, L. M., Lubeck, S., Scheffler, M., & Draxl, C. (in preparation). Extrapolation to complete basis-set limit in density-functional theory by quantile random-forest models.

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2303.14760.pdf (Preprint), 3MB
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 Creators:
Speckhard, Daniel1, Author           
Carbogno, Christian1, Author           
Ghiringhelli, Luca M.1, Author           
Lubeck, Sven, Author
Scheffler, Matthias1, Author           
Draxl, Claudia, Author
Affiliations:
1NOMAD, Fritz Haber Institute, Max Planck Society, ou_3253022              

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Free keywords: Physics, Computational Physics, physics.comp-ph, Condensed Matter, Materials Science, cond-mat.mtrl-sci
 Abstract: The numerical precision of density-functional-theory (DFT) calculations depends on a variety of computational parameters, one of the most critical being the basis-set size. The ultimate precision is reached with an infinitely large basis set, i.e., in the limit of a complete basis set (CBS). Our aim in this work is to find a machine-learning model that extrapolates finite basis-size calculations to the CBS limit. We start with a data set of 63 binary solids investigated with two all-electron DFT codes, exciting and FHI-aims, which employ very different types of basis sets. A quantile-random-forest model is used to estimate the total-energy correction with respect to a fully converged calculation as a function of the basis-set size. The random-forest model achieves a symmetric mean absolute percentage error of lower than 25% for both codes and outperforms previous approaches in the literature. Our approach also provides prediction intervals, which quantify the uncertainty of the models' predictions.

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Language(s): eng - English
 Dates: 2023-03-262023-03-31
 Publication Status: Not specified
 Pages: 12
 Publishing info: -
 Table of Contents: -
 Rev. Type: -
 Identifiers: arXiv: 2303.14760
 Degree: -

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