2021
DOI: 10.48550/arxiv.2107.04779
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Gradient domain machine learning with composite kernels: improving the accuracy of PES and force fields for large molecules

Kasra Asnaashari,
Roman V. Krems

Abstract: The generalization accuracy of machine learning models of potential energy surfaces (PES) and force fields (FF) for large polyatomic molecules can be generally improved either by increasing the number of training points or by improving the models. In order to build accurate models based on expensive high-level ab initio calculations, much of recent work has focused on the latter. In particular, it has been shown that gradient domain machine learning (GDML) models produce accurate results for high-dimensional m… Show more

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“…Here, the kernel complexity is usually not modified. However, a combination of kernels could be easily implemented given the analytic derivatives of them 43 ; however, the training procedure is based on all possible combinations of kernels and the selection of them is through a cross-validation scheme. The computational complexity of GDML also scales cubically with the number of training data.…”
Section: Introductionmentioning
confidence: 99%
“…Here, the kernel complexity is usually not modified. However, a combination of kernels could be easily implemented given the analytic derivatives of them 43 ; however, the training procedure is based on all possible combinations of kernels and the selection of them is through a cross-validation scheme. The computational complexity of GDML also scales cubically with the number of training data.…”
Section: Introductionmentioning
confidence: 99%