Publication | Closed Access
Optimizing transition states via kernel-based machine learning
110
Citations
24
References
2012
Year
EngineeringMachine LearningComputational ChemistryChemistryEnergy MinimizationMolecular DynamicsMolecular DesignMolecular ComputingTransition StatesHidden Markov ModelTransition State TheoryMathematical ChemistryBiophysicsPhysicsOptimal Dividing SurfacesPhysical ChemistryComputer ScienceDividing SurfacesQuantum ChemistryNatural SciencesSurface ScienceMarkov KernelSurface ReactivityKernel Method
We present a method for optimizing transition state theory dividing surfaces with support vector machines. The resulting dividing surfaces require no a priori information or intuition about reaction mechanisms. To generate optimal dividing surfaces, we apply a cycle of machine-learning and refinement of the surface by molecular dynamics sampling. We demonstrate that the machine-learned surfaces contain the relevant low-energy saddle points. The mechanisms of reactions may be extracted from the machine-learned surfaces in order to identify unexpected chemically relevant processes. Furthermore, we show that the machine-learned surfaces significantly increase the transmission coefficient for an adatom exchange involving many coupled degrees of freedom on a (100) surface when compared to a distance-based dividing surface.
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