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A hierarchical Bayesian framework for force field selection in molecular dynamics simulations
Author(s) -
Stephen Wu,
Panagiotis Angelikopoulos,
Costas Papadimitriou,
Robert Moser,
Petros Koumoutsakos
Publication year - 2015
Publication title -
philosophical transactions of the royal society a mathematical physical and engineering sciences
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.074
H-Index - 169
eISSN - 1471-2962
pISSN - 1364-503X
DOI - 10.1098/rsta.2015.0032
Subject(s) - bayesian probability , laplace's method , markov chain monte carlo , computer science , statistical physics , bayesian hierarchical modeling , hierarchical database model , force field (fiction) , monte carlo method , model selection , bayesian inference , field (mathematics) , markov chain , algorithm , mathematics , data mining , physics , machine learning , artificial intelligence , statistics , pure mathematics
We present a hierarchical Bayesian framework for the selection of force fields in molecular dynamics (MD) simulations. The framework associates the variability of the optimal parameters of the MD potentials under different environmental conditions with the corresponding variability in experimental data. The high computational cost associated with the hierarchical Bayesian framework is reduced by orders of magnitude through a parallelized Transitional Markov Chain Monte Carlo method combined with the Laplace Asymptotic Approximation. The suitability of the hierarchical approach is demonstrated by performing MD simulations with prescribed parameters to obtain data for transport coefficients under different conditions, which are then used to infer and evaluate the parameters of the MD model. We demonstrate the selection of MD models based on experimental data and verify that the hierarchical model can accurately quantify the uncertainty across experiments; improve the posterior probability density function estimation of the parameters, thus, improve predictions on future experiments; identify the most plausible force field to describe the underlying structure of a given dataset. The framework and associated software are applicable to a wide range of nanoscale simulations associated with experimental data with a hierarchical structure.

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