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On inference of causality for discrete state models in a multiscale context

机译:多尺度环境下离散状态模型的因果关系推断

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摘要

Discrete state models are a common tool of modeling in many areas. E.g., Markov state models as a particular representative of this model family became one of the major instruments for analysis and understanding of processes in molecular dynamics (MD). Here we extend the scope of discrete state models to the case of systematically missing scales, resulting in a nonstationary and nonhomogeneous formulation of the inference problem. We demonstrate how the recently developed tools of nonstationary data analysis and information theory can be used to identify the simultaneously most optimal (in terms of describing the given data) and most simple (in terms of complexity and causality) discrete state models. We apply the resulting formalism to a problem from molecular dynamics and show how the results can be used to understand the spatial and temporal causality information beyond the usual assumptions. We demonstrate that the most optimal explanation for the appropriately discretized/coarse-grained MD torsion angles data in a polypeptide is given by the causality that is localized both in time and in space, opening new possibilities for deploying percolation theory and stochastic subgridscale modeling approaches in the area of MD.
机译:离散状态模型是许多领域建模的常用工具。例如,作为该模型族的特定代表的马尔可夫状态模型成为分析和理解分子动力学(MD)过程的主要工具之一。在这里,我们将离散状态模型的范围扩展到系统缺少尺度的情况,从而导致推理问题的非平稳和非均匀表述。我们演示了如何使用最近开发的非平稳数据分析和信息理论工具来识别同时最佳的(根据描述给定数据)和最简单的(就复杂性和因果关系)离散状态模型。我们将产生的形式主义应用于分子动力学问题,并展示如何将结果用于理解通常假设之外的时空因果关系信息。我们证明了多肽中适当离散/粗粒度的MD扭转角数据的最佳最佳解释是由在时间和空间上都存在的因果关系给出的,这为部署渗流理论和随机亚网格规模建模方法提供了新的可能性MD的面积。

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