Pseudo-marginal approximation to the free energy in a micro–macro Markov chain Monte Carlo method

Author:

Vandecasteele Hannes12ORCID,Samaey Giovanni2ORCID

Affiliation:

1. Department of Chemical and Biomolecular Engineering, Johns Hopkins University 1 , 3400 N. Charles Street Baltimore, Maryland 21218, USA

2. Department of Computer Science, KU Leuven 2 , Celestijnenlaan 200A, 3001 Leuven, Belgium

Abstract

We introduce a generalized micro–macro Markov chain Monte Carlo (mM-MCMC) method with pseudo-marginal approximation to the free energy that is able to accelerate sampling of the microscopic Gibbs distributions when there is a time-scale separation between the macroscopic dynamics of a reaction coordinate and the remaining microscopic degrees of freedom. The mM-MCMC method attains this efficiency by iterating four steps: (i) propose a new value of the reaction coordinate, (ii) accept or reject the macroscopic sample, (iii) run a biased simulation that creates a microscopic molecular instance that lies close to the newly sampled macroscopic reaction coordinate value, and (iv) microscopic accept/reject step for the new microscopic sample. In the present paper, we eliminate the main computational bottleneck of earlier versions of this method: the necessity to have an accurate approximation of free energy. We show that the introduction of a pseudo-marginal approximation significantly reduces the computational cost of the microscopic accept/reject step while still providing unbiased samples. We illustrate the method’s behavior on several molecular systems with low-dimensional reaction coordinates.

Funder

Fonds Wetenschappelijk Onderzoek

Publisher

AIP Publishing

Reference27 articles.

1. A micro-macro Markov chain Monte Carlo method for molecular dynamics using reaction coordinate proposals;SIAM J. Sci. Comput.,2023

2. H. Vandecasteele and G.Samaey, “Efficiency and parameter selection of a micro-macro Markov chain Monte Carlo method,” arXiv:2209.13056 (2022).

3. Free energy calculations: An efficient adaptive biasing potential method;J. Phys. Chem. B,2010

4. The adaptive biasing force method: Everything you always wanted to know but were afraid to ask;J. Phys. Chem. B,2015

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