Complexity-based permutation entropies: from deterministic time series to white noise
J. M. Amig\'o, R. Dale, P. Tempesta

TL;DR
This paper introduces a unified framework using complexity classes and Z-entropy to analyze permutation entropy in both deterministic and noisy time series, including white noise.
Contribution
It develops a new approach based on complexity classes and Z-entropy, extending permutation entropy analysis to noisy and stochastic processes.
Findings
Permutation entropy discriminates between different complexity classes.
The approach applies to both deterministic systems and white noise.
Numerical simulations validate the effectiveness of the method.
Abstract
This is a paper in the intersection of time series analysis and complexity theory that presents new results on permutation complexity in general and permutation entropy in particular. In this context, permutation complexity refers to the characterization of time series by means of ordinal patterns (permutations), entropic measures, decay rates of missing ordinal patterns, and more. Since the inception of this \textquotedblleft ordinal\textquotedblright\ methodology, its practical application to any type of scalar time series and real-valued processes have proven to be simple and useful. However, the theoretical aspects have remained limited to noiseless deterministic series and dynamical systems, the main obstacle being the super-exponential growth of visible permutations with length when randomness (also in form of observational noise) is present in the data. To overcome this…
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