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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Statistical inference for functions of the covariance matrix in the stationary Gaussian time-orthogonal principal components model
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Statistical inference for functions of the covariance matrix in the stationary Gaussian time-orthogonal principal components model

机译:平稳高斯时间正交主成分模型中协方差矩阵函数的统计推断

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摘要

We consider inference for functions of the marginal covariance matrix under a class of stationary vector time series models, referred to as time-orthogonal principal components models. The main application which motivated this work involves the estimation of configurational entropy from molecular dynamics simulations in computational chemistry, where current methods of entropy estimation involve calculations based on the sample covariance matrix. The theoretical results we obtain provide a basis for approximate inference procedures, including confidence interval calculations for scalar quantities of interest; these results are applied to the molecular dynamics application, and some further applications are discussed briefly.
机译:我们考虑一类平稳向量时间序列模型(称为时间正交主成分模型)下的边际协方差矩阵函数的推断。推动这项工作的主要应用涉及从计算化学中的分子动力学模拟估算构型熵,其中目前的熵估算方法涉及基于样本协方差矩阵的计算。我们获得的理论结果为近似推理程序提供了基础,包括相关标量数量的置信区间计算;这些结果被应用于分子动力学应用,并简要讨论了其他一些应用。

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