The search for patterns in time series is a very common task when dealing with complex systems. This is usually accomplished by employing a complexity measure such as entropies and fractal dimensions. However, such measures usually only capture a single aspect of the system dynamics. Here, we propose a family of complexity measures for time series based on a generalization of the complexity-entropy causality plane. By replacing the Shannon entropy by a monoparametric entropy (Tsallis q entropy) and after considering the proper generalization of the statistical complexity (q complexity), we build up a parametric curve (the q-complexity-entropy curve) that is used for characterizing and classifying time series. Based on simple exact results a...
Acknowledgements The author wishes to acknowledge G. Giacomelli, M. Mulansky, and L. Ricci for early...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
The nonparametric Sample Entropy (SE) estimator has become a standard for the quantification of stru...
One of the most useful tools for distinguishing between chaotic and stochastic time series is the so...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
Complexity may be one of the most important measurements for analysing time series data; it covers o...
Complexity in time series is an intriguing feature of living dynamical systems, with potential use f...
Abstract The complex behavior of many systems in nature requires the application of robust methodolo...
Chaotic systems share with stochastic processes several properties that make them almost undistingui...
In this study, we present the highlights of complexity theory (Part I) and significant experimental ...
In this thesis we introduce an approach to the study of time series study by nonlinear dynamical sys...
Natural time is a new time domain introduced in 2001. The analysis of time series associated with a ...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
Information entropy is applied to the analysis of time series generated by dynamical systems. Comple...
The complexity-entropy causality plane, as a powerful tool for discriminating Gaussian from non-Gaus...
Acknowledgements The author wishes to acknowledge G. Giacomelli, M. Mulansky, and L. Ricci for early...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
The nonparametric Sample Entropy (SE) estimator has become a standard for the quantification of stru...
One of the most useful tools for distinguishing between chaotic and stochastic time series is the so...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
Complexity may be one of the most important measurements for analysing time series data; it covers o...
Complexity in time series is an intriguing feature of living dynamical systems, with potential use f...
Abstract The complex behavior of many systems in nature requires the application of robust methodolo...
Chaotic systems share with stochastic processes several properties that make them almost undistingui...
In this study, we present the highlights of complexity theory (Part I) and significant experimental ...
In this thesis we introduce an approach to the study of time series study by nonlinear dynamical sys...
Natural time is a new time domain introduced in 2001. The analysis of time series associated with a ...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
Information entropy is applied to the analysis of time series generated by dynamical systems. Comple...
The complexity-entropy causality plane, as a powerful tool for discriminating Gaussian from non-Gaus...
Acknowledgements The author wishes to acknowledge G. Giacomelli, M. Mulansky, and L. Ricci for early...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
The nonparametric Sample Entropy (SE) estimator has become a standard for the quantification of stru...