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通过有序分区进行马尔可夫建模:基于网络的时间序列分析的替代范式。

Markov modeling via ordinal partitions: An alternative paradigm for network-based time-series analysis.

机构信息

School of Mathematics & Statistics, The University of Western Australia, Crawley WA 6009, Australia.

Nodes & Links Ltd, Leof. Athalassas 176, Strovolos, Nicosia, 2025, Cyprus.

出版信息

Phys Rev E. 2019 Dec;100(6-1):062307. doi: 10.1103/PhysRevE.100.062307.

DOI:10.1103/PhysRevE.100.062307
PMID:31962534
Abstract

Mapping time series to complex networks to analyze observables has recently become popular, both at the theoretical and the practitioner's level. The intent is to use network metrics to characterize the dynamics of the underlying system. Applications cover a wide range of problems, from geoscientific measurements to biomedical data and financial time series. It has been observed that different dynamics can produce networks with distinct topological characteristics under a variety of time-series-to-network transforms that have been proposed in the literature. The direct connection, however, remains unclear. Here, we investigate a network transform based on computing statistics of ordinal permutations in short subsequences of the time series, the so-called ordinal partition network. We propose a Markovian framework that allows the interpretation of the network using ergodic-theoretic ideas and demonstrate, via numerical experiments on an ensemble of time series, that this viewpoint renders this technique especially well-suited to nonlinear chaotic signals. The aim is to test the mapping's faithfulness as a representation of the dynamics and the extent to which it retains information from the input data. First, we show that generating networks by counting patterns of increasing length is essentially a mechanism for approximating the analog of the Perron-Frobenius operator in a topologically equivalent higher-dimensional space to the original state space. Then, we illustrate a connection between the connectivity patterns of the networks generated by this mapping and indicators of dynamics such as the hierarchy of unstable periodic orbits embedded within a chaotic attractor. The input is a scalar observable and any projection of a multidimensional flow suffices for reconstruction of the essential dynamics. Additionally, we create a detailed guide for parameter tuning. We argue that there is no optimal value of the pattern length m, rather it admits a scaling region akin to traditional embedding practice. In contrast, the embedding lag and overlap between successive patterns can be chosen exactly in an optimal way. Our analysis illustrates the potential of this transform as a complementary toolkit to traditional time-series methods.

摘要

将时间序列映射到复杂网络上以分析可观测变量在理论和实践层面都变得越来越流行。其目的是使用网络指标来描述基础系统的动态。该方法的应用涵盖了从地球科学测量到生物医学数据和金融时间序列等广泛的问题。人们已经观察到,在文献中提出的各种时间序列到网络的转换下,不同的动态可以产生具有不同拓扑特征的网络。然而,直接的联系尚不清楚。在这里,我们研究了一种基于计算时间序列短子序列中有序排列统计的网络转换,即所谓的有序分区网络。我们提出了一个马尔可夫框架,允许使用遍历理论的思想来解释网络,并通过对时间序列集合的数值实验证明,这种观点特别适合非线性混沌信号。其目的是测试该映射作为动态表示的保真度以及它从输入数据中保留信息的程度。首先,我们表明,通过计数递增长度的模式来生成网络本质上是一种在拓扑等价的更高维空间中逼近原始状态空间中类似 Perron-Frobenius 算子的机制。然后,我们说明了通过这种映射生成的网络的连通模式与嵌入混沌吸引子中的不稳定周期轨道层次等动力学指标之间的联系。输入是标量可观测变量,任何多维流的投影都足以重建基本动态。此外,我们还创建了一个详细的参数调整指南。我们认为模式长度 m 没有最佳值,而是允许类似于传统嵌入实践的缩放区域。相比之下,可以以最优的方式精确选择连续模式之间的嵌入滞后和重叠。我们的分析说明了这种变换作为传统时间序列方法的补充工具包的潜力。

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