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Limiting relaxation times from Markov state models

机译:限制来自马尔可夫状态模型的放松时间

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Markov state models (MSMs) are more and more widely used in the analysis of molecular simulations to incorporate multiple trajectories together and obtain more accurate time scale information of the slowest processes in the system. Typically, however, multiple lagtimes are used and analyzed as input parameters, yet convergence with respect to the choice of lagtime is not always possible. Here, we present a simple method for calculating the slowest relaxation time (RT) of the system in the limit of very long lagtimes. Our approach relies on the fact that the second eigenvector's autocorrelation function of the propagator will be approximately single exponential at long lagtimes. This allows us to obtain a simple equation for the behavior of the MSM's relaxation time as a function of the lagtime with only two free parameters, one of these being the RT of the system. We demonstrate that the second parameter is a useful indicator of how Markovian a selected variable is for building the MSM. Fitting this function to data gives a limiting value for the optimal variational RT. Testing this on analytic and molecular dynamics data for AlaS and umbrella sampling-biased ion channel simulations shows that the function accurately describes the behavior of the RT and furthermore that this RT can improve noticeably the value calculated at the longest accessible lagtime. We compare our RT limit to the hidden Markov model (HMM) approach that typically finds RTs of comparable values. However, HMMs cannot be used in conjunction with biased simulation data, requiring more complex algorithms to construct than MSMs, and the derived RTs are not variational, leading to ambiguity in the choice of lagtime at which to build the HMM. Published by AIP Publishing.
机译:马尔可夫状态模型(MSMS)在分析分子模拟中越来越广泛地使用,以将多个轨迹结合在一起,并获得系统中最慢的过程的准确时间尺度信息。然而,通常,使用多个遗留时间并分析为输入参数,但是相对于LAGTEME的选择的收敛并不总是可能的。在这里,我们介绍了一种简单的方法,用于计算系统的最慢的放松时间(RT),其限制非常长的锯齿。我们的方法依赖于宣传师的第二个特征传播器的自相关函数在长的罕见中大约是单指数。这使我们可以获得MSM放松时间的行为的简单方程,作为LAGTIME的函数,其中一个是系统的一个,其中一个是系统的RT。我们演示了第二个参数是Markovian如何用于构建MSM的有用指标。将此功能拟合到数据给出了最佳变分RT的限制值。在Alas和伞形采样的分析和分子动力学数据上测试这一点,并且采样偏置离子通道模拟表明,该功能准确地描述了RT的行为,此外,该RT可以显着提高在最长可接近的LAG时间下计算的值。我们将RT限制与隐藏的马尔可夫模型(HMM)方法进行比较,该模型通常找到可比值的RTS。然而,HMMS不能与偏置模拟数据结合使用,需要比MSM更复杂的构造算法,并且导出的RTS不是变化的,导致在选择HMM的LAGTIME选择中的模糊性。通过AIP发布发布。

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