Fast and accurate modeling of molecular atomization energies with machine learning.
نویسندگان
چکیده
We introduce a machine learning model to predict atomization energies of a diverse set of organic molecules, based on nuclear charges and atomic positions only. The problem of solving the molecular Schrödinger equation is mapped onto a nonlinear statistical regression problem of reduced complexity. Regression models are trained on and compared to atomization energies computed with hybrid density-functional theory. Cross validation over more than seven thousand organic molecules yields a mean absolute error of ∼10 kcal/mol. Applicability is demonstrated for the prediction of molecular atomization potential energy curves.
منابع مشابه
Comment on "Fast and accurate modeling of molecular atomization energies with machine learning".
In a recent Letter [1], the authors construct a machine learning (ML) model of molecular atomization energies, which they compare to bond counting (BC) and the PM6 semiempirical method [2]. However, their ML model was trained and tested on density functional theory (DFT) energies while BC and PM6 are fit to standard enthalpies. For fair comparison, bond energies are refit to DFT data and PM6 is...
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Atomization energies are an important measure of chemical stability. Machine learning is used to model atomization energies of a diverse set of organic molecules, based on nuclear charges and atomic positions only [1]. Our scheme maps the problem of solving the molecular time-independent Schrödinger equation onto a non-linear statistical regression problem. Kernel ridge regression [2] models ar...
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ورودعنوان ژورنال:
- Physical review letters
دوره 108 5 شماره
صفحات -
تاریخ انتشار 2012