2022
DOI: 10.26434/chemrxiv-2022-rf742
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Algorithmic graph theory, reinforcement learning and game theory in MD simulations: from 3D-structures to topological 2D-MolGraphs and backwards

Abstract: This paper reviews graph theory-based methods that were recently developed in our group for post-processing molecular dynamics trajectories. We show that the use of algorithmic graph theory not only provides a direct and fast methodology to identify conformers sampled over time but also allows to follow the interconversions between the conformers through graphs of transitions in time. Examples of gas phase molecules and inhomogeneous aqueous solid interfaces are presented to demonstrate the power of topologica… Show more

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