Complexity measures are used in a number of applications including extraction of information from data such as ecological time series, detection of non-random structure in biomedical signals, testing of random number generators, language recognition and authorship attribution etc. Different complexity measures proposed in the literature like Shannon entropy, Relative entropy, Lempel-Ziv, Kolmogrov and Algorithmic complexity are mostly ineffective in analyzing short sequences that are further corrupted with noise. To address this problem, we propose a new complexity measure ETC and define it as the “Effort To Compress” the input sequence by a lossless compression algorithm. Here, we employ the lossless compression algorithm known as Non-Sequ...
International audienceWe introduce the multi-dimensional ordinal arrays complexity as a generalized ...
It has been suggested that a viable strategy to improve complexity estimation based on the assessmen...
The search for patterns in time series is a very common task when dealing with complex systems. This...
Shannon entropy has been extensively used for characterizing complexity of time series arising from ...
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...
The adoption of the Kolmogorov-Sinai entropy is becoming a popular research tool among physicists, e...
There is no single universally accepted definition of `Com- plexity'. There are several perspective...
In this short note we review the concept of complexity in the context of Information Theory (Shannon...
Entropy has been a common index to quantify the complexity of time series in a variety of fields. He...
This paper concentrates on the entropy estimation of time series. Two new algorithms are introduced:...
Approximate Entropy and especially Sample Entropy are recently frequently used algorithms for calcul...
Sample Entropy is the most popular definition of entropy and is widely used as a measure of the regu...
This is a presentation about joint work between Hector Zenil and Jean-Paul Delahaye. Zenil presents ...
In order to effectively mine the structural features in time series and simplify the complexity of t...
International audienceWe introduce the multi-dimensional ordinal arrays complexity as a generalized ...
It has been suggested that a viable strategy to improve complexity estimation based on the assessmen...
The search for patterns in time series is a very common task when dealing with complex systems. This...
Shannon entropy has been extensively used for characterizing complexity of time series arising from ...
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...
The adoption of the Kolmogorov-Sinai entropy is becoming a popular research tool among physicists, e...
There is no single universally accepted definition of `Com- plexity'. There are several perspective...
In this short note we review the concept of complexity in the context of Information Theory (Shannon...
Entropy has been a common index to quantify the complexity of time series in a variety of fields. He...
This paper concentrates on the entropy estimation of time series. Two new algorithms are introduced:...
Approximate Entropy and especially Sample Entropy are recently frequently used algorithms for calcul...
Sample Entropy is the most popular definition of entropy and is widely used as a measure of the regu...
This is a presentation about joint work between Hector Zenil and Jean-Paul Delahaye. Zenil presents ...
In order to effectively mine the structural features in time series and simplify the complexity of t...
International audienceWe introduce the multi-dimensional ordinal arrays complexity as a generalized ...
It has been suggested that a viable strategy to improve complexity estimation based on the assessmen...
The search for patterns in time series is a very common task when dealing with complex systems. This...