We propose a machine-learning approach based on Bayesian optimization to build global potential energy surfaces (PES) for reactive molecular systems using feedback from quantum scattering calculations. The method is designed to correct for the uncertainties of quantum chemistry calculations and yield potentials that reproduce accurately the reaction probabilities in a wide range of energies. These surfaces are obtained automatically and do not require manual fitting of the ab initio energies with analytical functions. The PES are built from a small number of ab initio points by an iterative process that incrementally samples the most relevant parts of the configuration space. Using the dynamical results of previous authors as targets, we sh...
The accuracy of an interpolation approach to molecular potential energy surfaces for quantum reactiv...
Predicting the values of the potential energy surface (PES) for a given chemical system is essential...
Predicting the values of the potential energy surface (PES) for a given chemical system is essential...
Abstract We propose a machine-learning approach based on Bayesian optimization to build global poten...
Abstract We propose a machine-learning approach based on Bayesian optimization to build global poten...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
Machine learning models are usually trained by a large number of observations (big data) to make pr...
Machine learning models are usually trained by a large number of observations (big data) to make pre...
Gaussian process regression (GPR) is an efficient non-parametric method for constructing multi-dimen...
We present an efficient approach to the determination of two-dimensional potential energy surfaces f...
We present an efficient approach to the determination of two-dimensional potential energy surfaces f...
The increasing computing power and the algorithmic improvements in quantum chemistry have been accel...
A global potential energy surface (PES) for the H+CH4 H-2+CH3 reaction has been constructed using t...
A practical quantum-dynamical method is described for predicting accurate rate constants for general...
The accuracy of an interpolation approach to molecular potential energy surfaces for quantum reactiv...
Predicting the values of the potential energy surface (PES) for a given chemical system is essential...
Predicting the values of the potential energy surface (PES) for a given chemical system is essential...
Abstract We propose a machine-learning approach based on Bayesian optimization to build global poten...
Abstract We propose a machine-learning approach based on Bayesian optimization to build global poten...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
Machine learning models are usually trained by a large number of observations (big data) to make pr...
Machine learning models are usually trained by a large number of observations (big data) to make pre...
Gaussian process regression (GPR) is an efficient non-parametric method for constructing multi-dimen...
We present an efficient approach to the determination of two-dimensional potential energy surfaces f...
We present an efficient approach to the determination of two-dimensional potential energy surfaces f...
The increasing computing power and the algorithmic improvements in quantum chemistry have been accel...
A global potential energy surface (PES) for the H+CH4 H-2+CH3 reaction has been constructed using t...
A practical quantum-dynamical method is described for predicting accurate rate constants for general...
The accuracy of an interpolation approach to molecular potential energy surfaces for quantum reactiv...
Predicting the values of the potential energy surface (PES) for a given chemical system is essential...
Predicting the values of the potential energy surface (PES) for a given chemical system is essential...