Chasing collective variables using temporal data-driven strategies

Author:

Chen HaochuanORCID,Chipot ChristopheORCID

Abstract

Abstract The convergence of free-energy calculations based on importance sampling depends heavily on the choice of collective variables (CVs), which in principle, should include the slow degrees of freedom of the biological processes to be investigated. Autoencoders (AEs), as emerging data-driven dimension reduction tools, have been utilised for discovering CVs. AEs, however, are often treated as black boxes, and what AEs actually encode during training, and whether the latent variables from encoders are suitable as CVs for further free-energy calculations remains unknown. In this contribution, we review AEs and their time-series-based variants, including time-lagged AEs (TAEs) and modified TAEs, as well as the closely related model variational approach for Markov processes networks (VAMPnets). We then show through numerical examples that AEs learn the high-variance modes instead of the slow modes. In stark contrast, time series-based models are able to capture the slow modes. Moreover, both modified TAEs with extensions from slow feature analysis and the state-free reversible VAMPnets (SRVs) can yield orthogonal multidimensional CVs. As an illustration, we employ SRVs to discover the CVs of the isomerizations of N-acetyl-N′-methylalanylamide and trialanine by iterative learning with trajectories from biased simulations. Last, through numerical experiments with anisotropic diffusion, we investigate the potential relationship of time-series-based models and committor probabilities.

Publisher

Cambridge University Press (CUP)

Subject

Biophysics

Cited by 10 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Spectral Map for Slow Collective Variables, Markovian Dynamics, and Transition State Ensembles;Journal of Chemical Theory and Computation;2024-09-12

2. The fast committor machine: Interpretable prediction with kernels;The Journal of Chemical Physics;2024-08-28

3. Analyzing Multimodal Probability Measures with Autoencoders;The Journal of Physical Chemistry B;2024-03-11

4. Learning Markovian dynamics with spectral maps;The Journal of Chemical Physics;2024-03-04

5. Collective Variable-Based Enhanced Sampling: From Human Learning to Machine Learning;The Journal of Physical Chemistry Letters;2024-02-08

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