Shannon entropy has been extensively used for characterizing complexity of time series arising from chaotic dynamical systems and stochastic processes such as Markov chains. However, for short and noisy time series, Shannon entropy performs poorly. Complexity measures which are based on lossless compression algorithms are a good substitute in such scenarios. We evaluate the performance of two such Compression-Complexity Measures namely Lempel-Ziv complexity (LZ) and Effort-To-Compress (ETC) on short time series from chaotic dynamical systems in the presence of noise. Both LZ and ETC outperform Shannon entropy (H) in accurately characterizing the dynamical complexity of such systems. For very short binary sequences (which arise in neuroscien...
The adoption of the Kolmogorov-Sinai entropy is becoming a popular research tool among physicists, e...
Measuring complexity from non-stationary time series provides an important clue to the understanding...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Shannon entropy has been extensively used for characteriz- ing complexity of time series arising fr...
There is no single universally accepted definition of `Complexity'. There are several perspectives o...
Complexity measures are used in a number of applications including extraction of information from da...
There is no single universally accepted definition of `Com- plexity'. There are several perspective...
In this short note, we outline some results about complexity of orbits of a dynamical system, entrop...
Measuring the complexity of dynamical systems is important in order to classify them and better unde...
In this thesis we introduce an approach to the study of time series study by nonlinear dynamical sys...
We present some new results that relate information to chaotic dynamics. In our approach the quantit...
Acknowledgements The author wishes to acknowledge G. Giacomelli, M. Mulansky, and L. Ricci for early...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
International audienceThis paper aims at introducing the Lempel-Ziv permutation complexity vs. permu...
In this chapter we aim at presenting applications of notions from Information Theory to the study of...
The adoption of the Kolmogorov-Sinai entropy is becoming a popular research tool among physicists, e...
Measuring complexity from non-stationary time series provides an important clue to the understanding...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...
Shannon entropy has been extensively used for characteriz- ing complexity of time series arising fr...
There is no single universally accepted definition of `Complexity'. There are several perspectives o...
Complexity measures are used in a number of applications including extraction of information from da...
There is no single universally accepted definition of `Com- plexity'. There are several perspective...
In this short note, we outline some results about complexity of orbits of a dynamical system, entrop...
Measuring the complexity of dynamical systems is important in order to classify them and better unde...
In this thesis we introduce an approach to the study of time series study by nonlinear dynamical sys...
We present some new results that relate information to chaotic dynamics. In our approach the quantit...
Acknowledgements The author wishes to acknowledge G. Giacomelli, M. Mulansky, and L. Ricci for early...
Time series from chaotic and stochastic systems shape properties which can make it hard to distingui...
International audienceThis paper aims at introducing the Lempel-Ziv permutation complexity vs. permu...
In this chapter we aim at presenting applications of notions from Information Theory to the study of...
The adoption of the Kolmogorov-Sinai entropy is becoming a popular research tool among physicists, e...
Measuring complexity from non-stationary time series provides an important clue to the understanding...
Partly motivated by entropy-estimation problems in neuroscience, we present a detailed and extensive...