We propose to analyze molecular dynamics (MD) output via a supervised machine learning (ML) algorithm, the decision tree. The approach aims to identify the predominant geometric features which correlate with trajectories that transition between two arbitrarily defined states. The data-driven algorithm aims to identify these features without the bias of human “chemical intuition”. We demonstrate the method by analyzing the proton exchange reactions in formic acid solvated in small water clusters. The simulations were performed with ab initio MD combined with a method to efficiently sample the rare event, path sampling. Our ML analysis identified relevant geometric variables involved in the proton transfer reaction and how they may change as ...
33 pages, 9 figuresComputing accurate rate constants for catalytic events occurring at the surface o...
International audienceComputing accurate rate constants for catalytic events occurring at the surfac...
Efficient sampling in both configuration and trajectory spaces, combined with mechanism analyses via...
We propose to analyze molecular dynamics (MD) output via a supervised machine learning (ML) algorith...
Molecular dynamics simulations are often key to the understanding of the mechanism, rate and yield o...
Molecular dynamics simulations are often key to the understanding of the mechanism, rate and yield o...
Molecular dynamics simulations are often key to the understanding of the mechanism, rate and yield o...
Understanding chemistry is essential for the optimization of reactions and the development of new re...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...
We present a systematic approach to reduce the dimensionality of a complex molecular system. Startin...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
Abstract: Chemical compound space refers to the vast set of all possible chemical compounds, estimat...
Path sampling techniques have been shown to be very efficient tools to study rare events in chemical...
Efficient sampling in both configuration and trajectory spaces, combined with mechanism analyses via...
Being able to predict the course of arbitrary chemical reactions is essential to the theory and appl...
33 pages, 9 figuresComputing accurate rate constants for catalytic events occurring at the surface o...
International audienceComputing accurate rate constants for catalytic events occurring at the surfac...
Efficient sampling in both configuration and trajectory spaces, combined with mechanism analyses via...
We propose to analyze molecular dynamics (MD) output via a supervised machine learning (ML) algorith...
Molecular dynamics simulations are often key to the understanding of the mechanism, rate and yield o...
Molecular dynamics simulations are often key to the understanding of the mechanism, rate and yield o...
Molecular dynamics simulations are often key to the understanding of the mechanism, rate and yield o...
Understanding chemistry is essential for the optimization of reactions and the development of new re...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...
We present a systematic approach to reduce the dimensionality of a complex molecular system. Startin...
From simple clustering techniques to more sophisticated neural networks, the use of machine learning...
Abstract: Chemical compound space refers to the vast set of all possible chemical compounds, estimat...
Path sampling techniques have been shown to be very efficient tools to study rare events in chemical...
Efficient sampling in both configuration and trajectory spaces, combined with mechanism analyses via...
Being able to predict the course of arbitrary chemical reactions is essential to the theory and appl...
33 pages, 9 figuresComputing accurate rate constants for catalytic events occurring at the surface o...
International audienceComputing accurate rate constants for catalytic events occurring at the surfac...
Efficient sampling in both configuration and trajectory spaces, combined with mechanism analyses via...