AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic chaotic dynamics from time-(un)correlated stochastic fluctuations when just short length data is available. Despite its importance, direct tests of chaos vs stochasticity in finite time series still lack of a definitive quantification. Here we present a novel approach based on recurrence analysis, a nonlinear approach to deal with data. The main idea is the identification of how recurrence microstates and permutation patterns are affected by time reversibility of data, and how its behavior can be used to distinguish stochastic and deterministic data. We demonstrate the efficiency of the method for a bunch of paradigmatic systems under strong ...
We revisit the Fisher-Shannon representation plane H × F, evaluated using the Bandt and Pompe recipe...
: This paper reports on the application to field measurements of time series methods developed on th...
The space overlap of an attractor reconstructed from a time series with a similarly reconstructed at...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
The nonlinearly scaled distributions of the strengths of the orthogonal modes in the data of a time ...
Many processes in nature are the result of many coupled individual subsystems (like population dynam...
The prediction of a single observable time series has been achieved with varying degrees of success....
xix, 121 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 ZhangTime series m...
Recurrence plots have been widely used for a variety of purposes such as analyzing dy-namical system...
We present a new method for analyzing time series which is designed to extract inherent deterministi...
Understanding the neuronal dynamics of dynamical diseases like epilepsy is of fundamental importance...
In this paper, we propose a new heuristic symbolic tool for unveiling chaotic and stochastic dynamic...
We review a relatively new statistical test that may be applied to determine whether an observed tim...
This work presents a new method to perform blind extraction of chaotic signals mixed with stochastic...
Chaotic systems share with stochastic processes several properties that make them almost undistingui...
We revisit the Fisher-Shannon representation plane H × F, evaluated using the Bandt and Pompe recipe...
: This paper reports on the application to field measurements of time series methods developed on th...
The space overlap of an attractor reconstructed from a time series with a similarly reconstructed at...
AbstractA fundamental question of data analysis is how to distinguish noise corrupted deterministic ...
The nonlinearly scaled distributions of the strengths of the orthogonal modes in the data of a time ...
Many processes in nature are the result of many coupled individual subsystems (like population dynam...
The prediction of a single observable time series has been achieved with varying degrees of success....
xix, 121 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2007 ZhangTime series m...
Recurrence plots have been widely used for a variety of purposes such as analyzing dy-namical system...
We present a new method for analyzing time series which is designed to extract inherent deterministi...
Understanding the neuronal dynamics of dynamical diseases like epilepsy is of fundamental importance...
In this paper, we propose a new heuristic symbolic tool for unveiling chaotic and stochastic dynamic...
We review a relatively new statistical test that may be applied to determine whether an observed tim...
This work presents a new method to perform blind extraction of chaotic signals mixed with stochastic...
Chaotic systems share with stochastic processes several properties that make them almost undistingui...
We revisit the Fisher-Shannon representation plane H × F, evaluated using the Bandt and Pompe recipe...
: This paper reports on the application to field measurements of time series methods developed on th...
The space overlap of an attractor reconstructed from a time series with a similarly reconstructed at...