Permutation Entropy and Information Recovery in Nonlinear Dynamic Economic Time Series

Miguel Henry, G. Judge
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引用次数: 38

Abstract

The focus of this paper is an information theoretic-symbolic logic approach to extract information from complex economic systems and unlock its dynamic content. Permutation Entropy (PE) is used to capture the permutation patterns-ordinal relations among the individual values of a given time series; to obtain a probability distribution of the accessible patterns; and to quantify the degree of complexity of an economic behavior system. Ordinal patterns are used to describe the intrinsic patterns, which are hidden in the dynamics of the economic system. Empirical applications involving the Dow Jones Industrial Average are presented to indicate the information recovery value and the applicability of the PE method. The results demonstrate the ability of the PE method to detect the extent of complexity (irregularity) and to discriminate and classify admissible and forbidden states.
非线性动态经济时间序列的置换熵与信息恢复
本文的重点是利用信息理论-符号逻辑方法从复杂的经济系统中提取信息并解锁其动态内容。置换熵(Permutation Entropy, PE)用于捕捉给定时间序列中各个值之间的置换模式-顺序关系;获得可访问模式的概率分布;并量化经济行为系统的复杂程度。序数模式用于描述隐藏在经济系统动力学中的内在模式。通过对道琼斯工业平均指数的实证应用,说明了PE方法的信息恢复价值和适用性。结果表明,PE方法能够检测复杂程度(不规则性),并区分和分类允许和禁止状态。
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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