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Distinguishing Noise from Chaos: Objective versus Subjective Criteria Using Horizontal Visibility Graph

机译:区分混沌噪声:使用水平可见度图的客观标准与主观标准

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摘要

A recently proposed methodology called the Horizontal Visibility Graph (HVG) [Luque et al., Phys. Rev. E., 80, 046103 (2009)] that constitutes a geometrical simplification of the well known Visibility Graph algorithm [Lacasa et al., Proc. Natl. Sci. U.S.A. 105, 4972 (2008)], has been used to study the distinction between deterministic and stochastic components in time series [L. Lacasa and R. Toral, Phys. Rev. E., 82, 036120 (2010)]. Specifically, the authors propose that the node degree distribution of these processes follows an exponential functional of the form , in which is the node degree and is a positive parameter able to distinguish between deterministic (chaotic) and stochastic (uncorrelated and correlated) dynamics. In this work, we investigate the characteristics of the node degree distributions constructed by using HVG, for time series corresponding to chaotic maps, 2 chaotic flows and different stochastic processes. We thoroughly study the methodology proposed by Lacasa and Toral finding several cases for which their hypothesis is not valid. We propose a methodology that uses the HVG together with Information Theory quantifiers. An extensive and careful analysis of the node degree distributions obtained by applying HVG allow us to conclude that the Fisher-Shannon information plane is a remarkable tool able to graphically represent the different nature, deterministic or stochastic, of the systems under study.
机译:最近提出的一种称为水平可见性图(HVG)的方法[Luque et al。,Phys。 Rev. E.,80,046103(2009)]构成了众所周知的Visibility Graph算法的几何简化[Lacasa等人,Proc.Natl.Acad.Sci.USA,90:2877,1987]。 Natl。科学[U.S.A. 105,4972(2008)],已用于研究时间序列中确定性和随机性成分之间的区别[L. Lacasa和R.Toral,物理学。 Rev. E.,82,036120(2010)]。具体来说,作者提出这些过程的节点度分布遵循形式的指数函数,其中节点度是一个正参数,能够区分确定性(混沌)和随机(不相关和相关)动力学。在这项工作中,我们研究了使用HVG构造的节点度分布的特征,针对与混沌图,2个混沌流和不同随机过程相对应的时间序列。我们彻底研究了Lacasa和Toral提出的方法,发现了一些其假设无效的案例。我们提出了一种将HVG与信息论量词结合使用的方法。对通过应用HVG获得的节点度分布进行的广泛而仔细的分析,使我们得出结论:Fisher-Shannon信息平面是一个出色的工具,能够以图形方式表示所研究系统的不同性质(确定性或随机性)。

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