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Multifractal analysis of visibility graph-based Ito-related connectivity time series

机译:基于可见性图的与Ito相关的连接时间序列的多重分形分析

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In this study, we investigate multifractal properties of connectivity time series resulting from the visibility graph applied to normally distributed time series generated by the Ito equations with multiplicative power-law noise. We show that multifractality of the connectivity time series (i.e., the series of numbers of links outgoing any node) increases with the exponent of the power-law noise. The multifractality of the connectivity time series could be due to the width of connectivity degree distribution that can be related to the exit time of the associated Ito time series. Furthermore, the connectivity time series are characterized by persistence, although the original Ito time series are random; this is due to the procedure of visibility graph that, connecting the values of the time series, generates persistence but destroys most of the nonlinear correlations. Moreover, the visibility graph is sensitive for detecting wide "depressions" in input time series. (C) 2016 AIP Publishing LLC.
机译:在这项研究中,我们研究了连通性时间序列的多重分形特性,这些特性是由能见度图应用于具有乘幂律噪声的Ito方程生成的正态分布时间序列的结果。我们表明,连通性时间序列(即从任何节点传出的链路数量的序列)的多重分数随幂律噪声的指数而增加。连接时间序列的多重性可能是由于连接度分布的宽度可能与关联的Ito时间序列的退出时间有关。此外,尽管最初的Ito时间序列是随机的,但连接性时间序列的特点是持久性。这是因为可见性图的过程将时间序列的值连接起来,产生了持久性,但破坏了大多数非线性相关性。此外,可见性图对于检测输入时间序列中的宽泛“压抑”非常敏感。 (C)2016 AIP出版有限责任公司。

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