Estimating the distribution of dynamic invariants: illustrated with an application to human photo-plethysmographic time series.

Michael Small
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引用次数: 8

Abstract

Dynamic invariants are often estimated from experimental time series with the aim of differentiating between different physical states in the underlying system. The most popular schemes for estimating dynamic invariants are capable of estimating confidence intervals, however, such confidence intervals do not reflect variability in the underlying dynamics. We propose a surrogate based method to estimate the expected distribution of values under the null hypothesis that the underlying deterministic dynamics are stationary. We demonstrate the application of this method by considering four recordings of human pulse waveforms in differing physiological states and show that correlation dimension and entropy are insufficient to differentiate between these states. In contrast, algorithmic complexity can clearly differentiate between all four rhythms.

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估计动态不变量的分布:以人体光容积脉搏波时间序列的应用为例。
动态不变量通常从实验时间序列中估计,目的是区分底层系统中不同的物理状态。估计动态不变量的最流行的方案是能够估计置信区间,然而,这种置信区间不能反映潜在动态的可变性。我们提出了一种基于代理的方法来估计在零假设下的值的期望分布,即潜在的确定性动态是平稳的。我们通过考虑四种不同生理状态下的人体脉冲波形记录来证明该方法的应用,并表明相关维数和熵不足以区分这些状态。相比之下,算法复杂性可以清楚地区分这四种节奏。
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