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Characterizing pseudoperiodic time series through the complex network approach

机译:通过复杂网络方法表征伪周期时间序列

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Recently a new framework has been proposed to explore the dynamics of pseudoperiodic time series by constructing a complex network [J. Zhang, M. Small, Phys. Rev. Lett. 96 (2006) 238701]. Essentially, this is a transformation from the time domain to the network domain, which allows for the dynamics of the time series to be studied via organization of the network. In this paper, we focus on the deterministic chaotic Rossler time series and stochastic noisy periodic data that yield substantially different structures of networks. In particular, we test an extensive range of network topology statistics, which have not been discussed in previous work, but which are capable of providing a comprehensive statistical characterization of the dynamics from different angles. Our goal is to find out how they reflect and quantify different aspects of specific dynamics, and how they can be used to distinguish different dynamical regimes. For example, we find that the joint degree distribution appears to fundamentally characterize spatial organizations of cycles in phase space, and this is quantified via an assortativity coefficient. We applied network statistics to electrocardiograms of a healthy individual and an arrythmia patient. Such time series are typically pseudoperiodic, but are noisy and nonstationary and degrade traditional phase-space based methods. These time series are, however, better differentiated by our network-based statistics. (C) 2008 Elsevier B.V. All rights reserved.
机译:最近,有人提出了一个新的框架,通过构建一个复杂的网络来探索伪周期时间序列的动力学[J. Zhang,M. Small,Phys。牧师96(2006)238701]。本质上,这是从时域到网络域的转换,它允许通过网络的组织研究时间序列的动态。在本文中,我们关注确定性混沌Rossler时间序列和随机噪声周期数据,这些数据产生了实质上不同的网络结构。特别是,我们测试了广泛的网络拓扑统计数据,这些数据在以前的工作中没有讨论过,但是它们能够从不同角度对动力学进行全面的统计表征。我们的目标是找出它们如何反映和量化特定动力学的不同方面,以及如何将它们用于区分不同的动力学状态。例如,我们发现联合度分布似乎从根本上描述了相空间中循环的空间组织,并且这是通过分类系数来量化的。我们将网络统计数据应用于健康个体和心律不齐患者的心电图。这样的时间序列通常是伪周期的,但是噪声大且不稳定,并且恶化了传统的基于相空间的方法。但是,通过基于网络的统计信息可以更好地区分这些时间序列。 (C)2008 Elsevier B.V.保留所有权利。

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