We present hierarchical machine learning (hML) of highly accurate potential energy surfaces (PESs). Our scheme is based on adding predictions of multiple Δ-machine learning models trained on energies and energy corrections calculated with a hierarchy of quantum chemical methods. Our (semi-)automatic procedure determines the optimal training set size and composition of each constituent machine learning model, simultaneously minimizing the computational effort necessary to achieve the required accuracy of the hML PES. Machine learning models are built using kernel ridge regression, and training points are selected with structure-based sampling. As an illustrative example, hML is applied to a high-level ab initio CH3Cl PES and is shown to sign...
Machine learning (ML) has been widely applied to chemical property prediction, most prominently for ...
Machine learning techniques are being increasingly used as flexible non-linear fitting and predictio...
Quantum mechanical predictive modelling in chemistry and biology is often hindered by the long time ...
We present hierarchical machine learning (hML) of highly accurate potential energy surfaces (PESs). ...
We present an efficient approach for generating highly accurate molecular potential energy surfaces ...
Inspired by Pople diagrams popular in quantum chemistry, we introduce a hierarchical scheme, based o...
Machine learning holds the promise of learning the energy functional via examples, bypassing the nee...
Inspired by Pople diagrams popular in quantum chemistry, we introduce a hierarchical scheme, based o...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
In these proceedings we perform a brief review of machine learning (ML) applications in theoretical ...
Models that combine quantum mechanics (QM) with machine learning (ML) promise to deliver the accurac...
Outline ======= We assembled data from Potential Energy Surface (PES) construction invoking the ...
Designing molecules and materials with desired properties is an important prerequisite for advancing...
We have developed a technique combining the accuracy of quantum Monte Carlo in describing the electr...
Machine learning (ML) has been widely applied to chemical property prediction, most prominently for ...
Machine learning techniques are being increasingly used as flexible non-linear fitting and predictio...
Quantum mechanical predictive modelling in chemistry and biology is often hindered by the long time ...
We present hierarchical machine learning (hML) of highly accurate potential energy surfaces (PESs). ...
We present an efficient approach for generating highly accurate molecular potential energy surfaces ...
Inspired by Pople diagrams popular in quantum chemistry, we introduce a hierarchical scheme, based o...
Machine learning holds the promise of learning the energy functional via examples, bypassing the nee...
Inspired by Pople diagrams popular in quantum chemistry, we introduce a hierarchical scheme, based o...
This thesis illustrates the use of machine learning algorithms and exact numerical methods to study ...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
In these proceedings we perform a brief review of machine learning (ML) applications in theoretical ...
Models that combine quantum mechanics (QM) with machine learning (ML) promise to deliver the accurac...
Outline ======= We assembled data from Potential Energy Surface (PES) construction invoking the ...
Designing molecules and materials with desired properties is an important prerequisite for advancing...
We have developed a technique combining the accuracy of quantum Monte Carlo in describing the electr...
Machine learning (ML) has been widely applied to chemical property prediction, most prominently for ...
Machine learning techniques are being increasingly used as flexible non-linear fitting and predictio...
Quantum mechanical predictive modelling in chemistry and biology is often hindered by the long time ...