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The asymptotic distribution of the permutation entropy

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posted on 2023-11-02, 10:28 authored by AA Rey, Alejandro FreryAlejandro Frery, J Gambini, MM Lucini
Ordinal patterns serve as a robust symbolic transformation technique, enabling the unveiling of latent dynamics within time series data. This methodology involves constructing histograms of patterns, followed by the calculation of both entropy and statistical complexity—an avenue yet to be fully understood in terms of its statistical properties. While asymptotic results can be derived by assuming a multinomial distribution for histogram proportions, the challenge emerges from the non-independence present in the sequence of ordinal patterns. Consequently, the direct application of the multinomial assumption is questionable. This study focuses on the computation of the asymptotic distribution of permutation entropy, considering the inherent patterns’ correlation structure. Furthermore, the research delves into a comparative analysis, pitting this distribution against the entropy derived from a multinomial law. We present simulation algorithms for sampling time series with prescribed histograms of patterns and transition probabilities between them. Through this analysis, we better understand the intricacies of ordinal patterns and their statistical attributes.

History

Preferred citation

Rey, A. A., Frery, A. C., Gambini, J. & Lucini, M. M. (2023). The asymptotic distribution of the permutation entropy. Chaos: An Interdisciplinary Journal of Nonlinear Science, 33(11). https://doi.org/10.1063/5.0171508

Journal title

Chaos: An Interdisciplinary Journal of Nonlinear Science

Volume

33

Issue

11

Publication date

2023-11-01

Publisher

AIP Publishing

Publication status

Published

Online publication date

2023-11-01

ISSN

1054-1500

eISSN

1089-7682

Language

en

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