利用可见性图算法检测一对时间序列之间的时间滞后

Q4 Mathematics
Majnu John, J. Ferbinteanu
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引用次数: 3

摘要

摘要估计一对时间序列之间的时滞在许多实际应用中具有重要意义。在本文中,我们介绍了一种量化这种滞后的方法,该方法采用可见性图算法,将时间序列转换为数学图。目前广泛使用的滞后检测方法是基于相互关系的,这种方法有一定的局限性。我们给出了一些模拟实例,其中新方法可以正确和明确地识别滞后,而互相关方法则不能。本文包括一项广泛的模拟研究的结果,该研究旨在更好地理解新方法比现有方法执行得更好或更差的场景。我们还提出了一个基于似然的参数化建模框架,并考虑了量化新方法的不确定性和假设检验的框架。我们将现有方法和新方法应用于两个案例研究,一个来自神经科学,另一个来自环境流行病学,以进一步说明这些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting time lag between a pair of time series using visibility graph algorithm
Abstract Estimating the time lag between a pair of time series is of significance in many practical applications. In this article, we introduce a method to quantify such lags by adapting the visibility graph algorithm, which converts time series into a mathematical graph. Currently widely used method to detect such lags is based on cross-correlations, which has certain limitations. We present simulated examples where the new method identifies the lag correctly and unambiguously while as the cross-correlation method does not. The article includes results from an extensive simulation study conducted to better understand the scenarios where the new method performed better or worse than the existing approach. We also present a likelihood based parametric modeling framework and consider frameworks for quantifying uncertainty and hypothesis testing for the new approach. We apply the current and new methods to two case studies, one from neuroscience and the other from environmental epidemiology, to illustrate the methods further.
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
29
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