Bayesian optimization for constructing potential energy surfaces of polyatomic molecules with the smallest number of ab initio calculations.
ORAL
Abstract
We examine the application of kernel methods of machine learning for constructing potential energy surfaces (PES) of polyatomic molecules. In particular, we illustrate the application of Bayesian optimization with Gaussian processes as an efficient method for sampling the configuration space of polyatomic molecules. Bayesian optimization relies on two key components: a prior over an objective function and a mechanism for sampling the configuration space. We use Gaussian processes to model the objective function and various acquisition functions commonly used in computer science to quantify the accuracy of sampling. The PES is obtained through an iterative process of adding ab initio points at the locations maximizing the acquisition function and re-trainig the Gaussian process with new points added. We sample different PESs with one or many acquisition functions and show how the acquisition functions affect the construction of the PESs.
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Authors
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Rodrigo A Vargas-Hernandez
Univ of British Columbia
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Roman V Krems
University of British Columbia, Univ of British Columbia, Univ British Columbia