Sign patterns symbolization and its use in improved dependence test for complex network inference

Arthur Matsuo Yamashita Rios de Sousa, J. Hlinka
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Abstract

Inferring the dependence structure of complex networks from the observation of the non-linear dynamics of its components is among the common, yet far from resolved challenges faced when studying real-world complex systems. While a range of methods using the ordinal patterns framework has been proposed to particularly tackle the problem of dependence inference in the presence of non-linearity, they come with important restrictions in the scope of their application. Hereby, we introduce the sign patterns as an extension of the ordinal patterns, arising from a more flexible symbolization which is able to encode longer sequences with lower number of symbols. After transforming time series into sequences of sign patterns, we derive improved estimates for statistical quantities by considering necessary constraints on the probabilities of occurrence of combinations of symbols in a symbolic process with prohibited transitions. We utilize these to design an asymptotic chi-squared test to evaluate dependence between two time series and then apply it to the construction of climate networks, illustrating that the developed method can capture both linear and non-linear dependences, while avoiding bias present in the naive application of the often used Pearson correlation coefficient or mutual information.
符号模式符号化及其在复杂网络推理改进依赖检验中的应用
通过观察其组成部分的非线性动力学来推断复杂网络的依赖结构是研究现实世界复杂系统时面临的常见但远未解决的挑战之一。虽然已经提出了一系列使用有序模式框架的方法来特别解决非线性存在下的依赖推理问题,但它们在应用范围上有重要的限制。在此,我们引入符号模式作为序数模式的扩展,产生了一种更灵活的符号化,可以用更少的符号数来编码更长的序列。在将时间序列转换为符号模式序列之后,我们通过考虑在禁止转换的符号过程中符号组合出现概率的必要约束,推导出改进的统计量估计。我们利用这些设计了一个渐近卡方检验来评估两个时间序列之间的相关性,然后将其应用于气候网络的构建,表明所开发的方法可以捕获线性和非线性相关性,同时避免了通常使用的Pearson相关系数或互信息的幼稚应用中存在的偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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