计算机科学
匹配(统计)
分子动力学
统计物理学
熵(时间箭头)
流量(数学)
算法
粒度
能量最小化
力场(虚构)
朗之万动力
Kullback-Leibler散度
物理
机械
数学
人工智能
化学
计算化学
热力学
统计
操作系统
作者
Jonas Köhler,Yaoyi Chen,Andreas Krämer,Cecilia Clementi,Frank Noé
标识
DOI:10.1021/acs.jctc.3c00016
摘要
Coarse-grained (CG) molecular simulations have become a standard tool to study molecular processes on time- and length-scales inaccessible to all-atom simulations. Parameterizing CG force fields to match all-atom simulations has mainly relied on force-matching or relative entropy minimization, which require many samples from costly simulations with all-atom or CG resolutions, respectively. Here we present flow-matching, a new training method for CG force fields that combines the advantages of both methods by leveraging normalizing flows, a generative deep learning method. Flow-matching first trains a normalizing flow to represent the CG probability density, which is equivalent to minimizing the relative entropy without requiring iterative CG simulations. Subsequently, the flow generates samples and forces according to the learned distribution in order to train the desired CG free energy model via force matching. Even without requiring forces from the all-atom simulations, flow-matching outperforms classical force-matching by an order of magnitude in terms of data efficiency, and produces CG models that can capture the folding and unfolding transitions of small proteins.
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