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Effects of missing data on characterization of complex dynamics from time series

机译:丢失数据对时间序列复杂动力学特征的影响

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Experimental time series often contain bad segments that arise from artifacts, changes in experimental conditions, or failures in recording equipment. Such segments are usually removed from the time series during the preprocessing stage that can alter the correlation or other properties of the signals. Aiming to reveal how the effects of data loss depend on the amount of missing data, we consider here different regimes of regular and chaotic dynamics with excluded segments. Using several data processing techniques, namely, the wavelet-transform modulus maxima (WTMM) approach, the detrended fluctuation analysis (DFA) and the multiresolution analysis based on the discrete wavelet-transform (DWT), we demonstrate essentially different effects of the missing data for positively correlated time series and anti-correlated signals. All the techniques show that positively correlated time series are significantly less sensitive to excluded segments and enable the characterization of the object's properties even under the condition of an extreme data loss. We verify the ability of characterizing physiological systems using an example of the cerebrovascular dynamics based on time series with missing data. A weak sensitivity of the cerebral blood flow to data loss is an important issue for diagnostic-related studies. (C) 2018 Elsevier B.V. All rights reserved.
机译:实验时间序列通常包含由伪影,实验条件变化或记录设备故障引起的不良段。通常在预处理阶段将这些片段从时间序列中删除,这会改变信号的相关性或其他属性。为了揭示数据丢失的影响如何取决于丢失的数据量,我们在这里考虑了不同规律的规律和混沌动力学以及被排除的部分。使用几种数据处理技术,即小波变换模极大值(WTMM)方法,去趋势波动分析(DFA)和基于离散小波变换(DWT)的多分辨率分析,我们证明了缺失数据的本质不同影响用于正相关的时间序列和反相关的信号。所有技术都表明,正相关的时间序列对排除的段的敏感度明显降低,即使在极端数据丢失的情况下,也可以表征对象的属性。我们使用基于缺少数据的时间序列的脑血管动力学实例验证了表征生理系统的能力。脑血流对数据丢失的敏感性较弱是诊断相关研究的重要问题。 (C)2018 Elsevier B.V.保留所有权利。

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