Here, Zanin and Olivares review the permutation patterns-based metrics used to distinguish chaos from stochasticity in discrete time series. They analyse their performance and computational cost, and compare their applicability to real-world time series
The study of permutation complexity can be envisioned as a new kind of symbolic dynamics whose basic...
This is a paper in the intersection of time series analysis and complexity theory that presents new ...
Abstract Extracting relevant properties of empirical signals generated by nonlinear, stochastic, and...
One of the most important aspects of time series is their degree of stochasticity vs. chaoticity. Si...
Strategies based on the extraction of measures from ordinal patterns transformation, such as probabi...
This paper deals with the distinction between white noise and deterministic chaos in multivariate no...
Permutation entropy has become a standard tool for time series analysis that exploits the temporal a...
In this work, we apply ordinal analysis of time series to the characterisation of neuronal activity....
We introduce a representation space to contrast chaotic with stochastic dynamics. Following the comp...
Recently proposed ordinal networks not only afford novel methods of nonlinear time series analysis b...
In this paper we illustrate the potential of ordinal-patterns-based methods for analysis of real-wor...
When calculating the Bandt and Pompe ordinal pattern distribution from given time series at depth D,...
In this paper, we propose a new heuristic symbolic tool for unveiling chaotic and stochastic dynamic...
Recent research aiming at the distinction between deterministic or stochastic behavior in observatio...
Permutation entropy, introduced by Bandt and Pompe, is a conceptually simple and well-interpretable ...
The study of permutation complexity can be envisioned as a new kind of symbolic dynamics whose basic...
This is a paper in the intersection of time series analysis and complexity theory that presents new ...
Abstract Extracting relevant properties of empirical signals generated by nonlinear, stochastic, and...
One of the most important aspects of time series is their degree of stochasticity vs. chaoticity. Si...
Strategies based on the extraction of measures from ordinal patterns transformation, such as probabi...
This paper deals with the distinction between white noise and deterministic chaos in multivariate no...
Permutation entropy has become a standard tool for time series analysis that exploits the temporal a...
In this work, we apply ordinal analysis of time series to the characterisation of neuronal activity....
We introduce a representation space to contrast chaotic with stochastic dynamics. Following the comp...
Recently proposed ordinal networks not only afford novel methods of nonlinear time series analysis b...
In this paper we illustrate the potential of ordinal-patterns-based methods for analysis of real-wor...
When calculating the Bandt and Pompe ordinal pattern distribution from given time series at depth D,...
In this paper, we propose a new heuristic symbolic tool for unveiling chaotic and stochastic dynamic...
Recent research aiming at the distinction between deterministic or stochastic behavior in observatio...
Permutation entropy, introduced by Bandt and Pompe, is a conceptually simple and well-interpretable ...
The study of permutation complexity can be envisioned as a new kind of symbolic dynamics whose basic...
This is a paper in the intersection of time series analysis and complexity theory that presents new ...
Abstract Extracting relevant properties of empirical signals generated by nonlinear, stochastic, and...