2024
DOI: 10.1021/acs.jctc.4c01197
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Descriptor-Free Collective Variables from Geometric Graph Neural Networks

Jintu Zhang,
Luigi Bonati,
Enrico Trizio
et al.

Abstract: Enhanced sampling simulations make the computational study of rare events feasible. A large family of such methods crucially depends on the definition of some collective variables (CVs) that could provide a low-dimensional representation of the relevant physics of the process. Recently, many methods have been proposed to semiautomatize the CV design by using machine learning tools to learn the variables directly from the simulation data. However, most methods are based on feedforward neural networks and requir… Show more

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