Concepts and measures of time series uncertainty and complexity have been applied across domains for behavior classification, risk assessments, and event detection/prediction. This paper contributes three new measures based on an encoding of the series' phase space into a descriptive Markov model. Here we describe constructing this kind of “Revealed Dynamics Markov Model” (RDMM) and using it to calculate the three uncertainty measures: entropy, uniformity, and effective edge density. We compare our approach to existing methods such as approximate entropy (ApEn) and permutation entropy using simulated and empirical time series with known uncertainty features. While previous measures capture local noise or the regularity of short patterns, ou...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
The Markov and non-Markov processes in complex systems are examined with the help of dynamical infor...
Measuring the complexity of dynamical systems is important in order to classify them and better unde...
Concepts and measures of time series uncertainty and complexity have been applied across domains for...
This paper addresses the problem of measuring complexity from embedded attractors as a way to charac...
: A technique for identification and quantification of chaotic dynamics in experimental time series ...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
Entropy measures are widely applied to quantify the complexity of dynamical systems in diverse field...
Dispersion entropy (DispEn) is a recently introduced entropy metric to quantify the uncertainty of t...
Complexity may be one of the most important measurements for analysing time series data; it covers o...
Based on information theory, a number of entropy measures have been proposed since the 1990s to asse...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
A generalized Statistical Complexity Measure (SCM) is a functional that characterizes the probabilit...
This dissertation explores the use of Shannon’s entropy and mutual information to quantify uncertain...
Abstract: This note considers alternative probabilistic presentations of uncertainties of complex sy...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
The Markov and non-Markov processes in complex systems are examined with the help of dynamical infor...
Measuring the complexity of dynamical systems is important in order to classify them and better unde...
Concepts and measures of time series uncertainty and complexity have been applied across domains for...
This paper addresses the problem of measuring complexity from embedded attractors as a way to charac...
: A technique for identification and quantification of chaotic dynamics in experimental time series ...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
Entropy measures are widely applied to quantify the complexity of dynamical systems in diverse field...
Dispersion entropy (DispEn) is a recently introduced entropy metric to quantify the uncertainty of t...
Complexity may be one of the most important measurements for analysing time series data; it covers o...
Based on information theory, a number of entropy measures have been proposed since the 1990s to asse...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
A generalized Statistical Complexity Measure (SCM) is a functional that characterizes the probabilit...
This dissertation explores the use of Shannon’s entropy and mutual information to quantify uncertain...
Abstract: This note considers alternative probabilistic presentations of uncertainties of complex sy...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
The Markov and non-Markov processes in complex systems are examined with the help of dynamical infor...
Measuring the complexity of dynamical systems is important in order to classify them and better unde...