We propose two alternate information theoretical approaches to assess non-Gaussian fluctuations in the return dynamics of financial markets. Specifically, we use superinformation, which is a measure of the disorder of the entropy of time series. We argue on theoretical grounds on its usefulness and show that it can be applied effectively for analyzing returns. A study of stock market data for over five years has been carried out using this approach. We show how superinformation helps to identify and classify important signals in the time series. The financial crisis of 2008 comes out very clearly in the superinformation plots. In addition, we introduce the super mutual information. Distinct super mutual information signatures are observed t...
Recent literature has been documented that commodity prices have become more and more correlated wit...
A well-interpretable measure of information has been recently proposed based on a partition obtained...
Entropy serves as a measure of chaos in systems by representing the average rate of information loss...
We propose two alternate information theoretical approaches to assess non-Gaussian fluctuations in t...
Following the recently introduced concept of transfer entropy, we attempt to measure the information...
Recently, there has been an explosive interest in the literature about modeling and forecasting vola...
In this paper, we quantify the statistical coherence between financial time series by means of the R...
We investigate the relative information efficiency of financial markets by measuring the entropy of ...
A well-interpretable measure of information has been recently proposed based on a partition obtained...
With their article on Maximum Entropy (ME) densities for time-varying moments, Rockinger and Jondeau...
This paper features an analysis of the relationship between the S&P 500 Index and the VIX using ...
textabstractThis paper features an analysis of the relationship between the S&P 500 Index and the VI...
In this study, we use entropy-based measures to identify different types of trading behaviors.1We de...
Following the recently introduced concept of transfer entropy, we attempt to measure the information...
This work studies stock markets efficiency and predictability using the information-theoretic concep...
Recent literature has been documented that commodity prices have become more and more correlated wit...
A well-interpretable measure of information has been recently proposed based on a partition obtained...
Entropy serves as a measure of chaos in systems by representing the average rate of information loss...
We propose two alternate information theoretical approaches to assess non-Gaussian fluctuations in t...
Following the recently introduced concept of transfer entropy, we attempt to measure the information...
Recently, there has been an explosive interest in the literature about modeling and forecasting vola...
In this paper, we quantify the statistical coherence between financial time series by means of the R...
We investigate the relative information efficiency of financial markets by measuring the entropy of ...
A well-interpretable measure of information has been recently proposed based on a partition obtained...
With their article on Maximum Entropy (ME) densities for time-varying moments, Rockinger and Jondeau...
This paper features an analysis of the relationship between the S&P 500 Index and the VIX using ...
textabstractThis paper features an analysis of the relationship between the S&P 500 Index and the VI...
In this study, we use entropy-based measures to identify different types of trading behaviors.1We de...
Following the recently introduced concept of transfer entropy, we attempt to measure the information...
This work studies stock markets efficiency and predictability using the information-theoretic concep...
Recent literature has been documented that commodity prices have become more and more correlated wit...
A well-interpretable measure of information has been recently proposed based on a partition obtained...
Entropy serves as a measure of chaos in systems by representing the average rate of information loss...