Graduate School of Simulation Studies, University of Hyogo, 7-1-28 Minatojima-minamimachi, Chuo-ku, Kobe, Hyogo 650-0047, Japan.
Kochi National College of Technology, Monobe-Otsu 200-1, Nankoku, Kochi 783-8508, Japan.
Phys Rev E. 2016 Mar;93(3):032323. doi: 10.1103/PhysRevE.93.032323. Epub 2016 Mar 28.
We describe a method for constructing networks for multivariate nonlinear time series. We approach the interaction between the various scalar time series from a deterministic dynamical system perspective and provide a generic and algorithmic test for whether the interaction between two measured time series is statistically significant. The method can be applied even when the data exhibit no obvious qualitative similarity: a situation in which the naive method utilizing the cross correlation function directly cannot correctly identify connectivity. To establish the connectivity between nodes we apply the previously proposed small-shuffle surrogate (SSS) method, which can investigate whether there are correlation structures in short-term variabilities (irregular fluctuations) between two data sets from the viewpoint of deterministic dynamical systems. The procedure to construct networks based on this idea is composed of three steps: (i) each time series is considered as a basic node of a network, (ii) the SSS method is applied to verify the connectivity between each pair of time series taken from the whole multivariate time series, and (iii) the pair of nodes is connected with an undirected edge when the null hypothesis cannot be rejected. The network constructed by the proposed method indicates the intrinsic (essential) connectivity of the elements included in the system or the underlying (assumed) system. The method is demonstrated for numerical data sets generated by known systems and applied to several experimental time series.
我们描述了一种构建多元非线性时间序列网络的方法。我们从确定性动力系统的角度来研究各个标量时间序列之间的相互作用,并提供了一种通用的算法测试,用于判断两个测量时间序列之间的相互作用是否具有统计学意义。即使数据没有明显的定性相似性,该方法也可以应用:在这种情况下,直接使用互相关函数的简单方法无法正确识别连通性。为了建立节点之间的连接,我们应用了先前提出的小混洗替代(SSS)方法,该方法可以从确定性动力系统的角度研究两个数据集之间的短期变异性(不规则波动)之间是否存在相关结构。基于该思想构建网络的过程由三个步骤组成:(i)将每个时间序列视为网络的基本节点,(ii)应用 SSS 方法验证从整个多元时间序列中获取的每对时间序列之间的连通性,以及(iii)当无法拒绝零假设时,将一对节点用无向边连接。通过所提出的方法构建的网络表示系统中包含的元素的内在(本质)连通性或潜在(假设)系统。该方法已应用于通过已知系统生成的数值数据集,并应用于几个实验时间序列。