Bandt and Pompe introduced Permutation Entropy as a complexity measure and has been widely used in time series analysis and in many fields of nonlinear dynamics. In theory these time series come from a process that generates continuous values, and if equal values exists in a neighborhood, , they can be neglected with no consequences because their probability of occurrence is insignificant. Since then, this measure has been modified and extended, in particular in cases when the amount of equal values in the time series is large due to the observational method, and cannot be neglected. We test the new Data Driven Method of Imputation that cope with this type of time series without modifying the essence of the Bandt and Pompe Probability Distr...
Entropy is a powerful tool for the analysis of time series, as it allows describing the probability ...
It is an interesting area to analyze the complexity or dependence of time series. Many information-t...
Permutation entropy (PE) is commonly used to discriminate complex structure from white noise in a ti...
More than ten years ago Bandt and Pompe introduced a new measure to quantify complexity in measured ...
A symbolic encoding scheme, based on the ordinal relation between the amplitude of neighboring value...
This paper aims at introducing the Lempel–Ziv permutation complexity vs. permutation entropy plane (...
Permutation entropy measures the complexity of a deterministic time series via a data symbolic quant...
This is a paper in the intersection of time series analysis and complexity theory that presents new ...
We present the Bayesian estimation of Permutation Entropy. In particular, we studied the bias and th...
A symbolic encoding scheme, based on the ordinal relation between the amplitude of neighboring value...
By appealing to a long list of different nonlinear maps we review the characterization of time serie...
Measuring complexity of observed time series plays an important role for understanding the character...
Entropy is a powerful tool for the analysis of time series, as it allows describing the probability ...
In nonlinear dynamics, and to a lesser extent in other fields, a widely used measure of complexity i...
Permutation entropy contains the information about the temporal structure associated with the underl...
Entropy is a powerful tool for the analysis of time series, as it allows describing the probability ...
It is an interesting area to analyze the complexity or dependence of time series. Many information-t...
Permutation entropy (PE) is commonly used to discriminate complex structure from white noise in a ti...
More than ten years ago Bandt and Pompe introduced a new measure to quantify complexity in measured ...
A symbolic encoding scheme, based on the ordinal relation between the amplitude of neighboring value...
This paper aims at introducing the Lempel–Ziv permutation complexity vs. permutation entropy plane (...
Permutation entropy measures the complexity of a deterministic time series via a data symbolic quant...
This is a paper in the intersection of time series analysis and complexity theory that presents new ...
We present the Bayesian estimation of Permutation Entropy. In particular, we studied the bias and th...
A symbolic encoding scheme, based on the ordinal relation between the amplitude of neighboring value...
By appealing to a long list of different nonlinear maps we review the characterization of time serie...
Measuring complexity of observed time series plays an important role for understanding the character...
Entropy is a powerful tool for the analysis of time series, as it allows describing the probability ...
In nonlinear dynamics, and to a lesser extent in other fields, a widely used measure of complexity i...
Permutation entropy contains the information about the temporal structure associated with the underl...
Entropy is a powerful tool for the analysis of time series, as it allows describing the probability ...
It is an interesting area to analyze the complexity or dependence of time series. Many information-t...
Permutation entropy (PE) is commonly used to discriminate complex structure from white noise in a ti...