Efficient Monte Carlo sampling of metastable systems using non-local collective variable updates
Abstract
Monte Carlo simulations are widely used to simulate complex molecular systems, but standard approaches suffer from metastability. Lately, the use of non-local proposal updates in a collective-variable (CV) space has been proposed in several works. Here, we generalize these approaches and explicitly spell out an algorithm for non-linear CVs and underdamped Langevin dynamics. We prove reversibility of the resulting scheme and demonstrate its performance on several numerical examples, observing a substantial performance increase compared to methods based on overdamped Langevin dynamics as considered previously. Advances in generative machine-learning-based proposal samplers now enable efficient sampling in CV spaces of intermediate dimensionality (tens to hundreds of variables), and our results extend their applicability toward more realistic molecular systems.
Cite
@article{arxiv.2512.16812,
title = {Efficient Monte Carlo sampling of metastable systems using non-local collective variable updates},
author = {Christoph Schönle and Davide Carbone and Marylou Gabrié and Tony Lelièvre and Gabriel Stoltz},
journal= {arXiv preprint arXiv:2512.16812},
year = {2026}
}
Comments
Updated two references, fixed a small number of typos