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Causality detection based on information-theoretic approaches in time series analysis

机译:时间序列分析中基于信息论方法的因果关系检测

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Synchronization, a basic nonlinear phenomenon, is widely observed in diverse complex systems studied in physical, biological and other natural sciences, as well as in social sciences, economy and finance. While studying such complex systems, it is important not only to detect synchronized states, but also to identify causal relationships (i.e. who drives whom) between concerned (sub) systems. The knowledge of information-theoretic measures (i.e. mutual information, conditional entropy) is essential for the analysis of information flow between two systems or between constituent subsystems of a complex system. However, the estimation of these measures from a set of finite samples is not trivial. The current extensive literatures on entropy and mutual information estimation provides a wide variety of approaches, from approximation-statistical, studying rate of convergence or consistency of an estimator for a general distribution, over learning algorithms operating on partitioned data space to heuristical approaches. The aim of this paper is to provide a detailed overview of information theoretic approaches for measuring causal influence in multivariate time series and to focus on diverse approaches to the entropy and mutual information estimation.
机译:同步是一种基本的非线性现象,在物理,生物和其他自然科学以及社会科学,经济和金融领域研究的各种复杂系统中得到广泛观察。在研究这样的复杂系统时,重要的是不仅要检测同步状态,而且要确定相关(子)系统之间的因果关系(即谁驱动了谁)。信息理论度量(即互信息,条件熵)的知识对于分析两个系统之间或复杂系统的组成子系统之间的信息流至关重要。但是,从一组有限样本中估算这些度量并非易事。当前关于熵和互信息估计的大量文献提供了各种各样的方法,从近似统计,研究总体分布估计量的收敛速度或一致性,到在分区数据空间上运行的学习算法到启发式方法。本文的目的是详细介绍用于测量多元时间序列中因果影响的信息理论方法,并将重点放在熵和互信息估计的各种方法上。

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