We construct an autocorrelation matrix of a time series and analyze it based on the random-matrix theory (RMT) approach. The autocorrelation matrix is capable of extracting information which is not easily accessible by the direct analysis of the autocorrelation function. In order to provide a precise conclusion based on the information extracted from the autocorrelation matrix, the results must be first evaluated. In other words they need to be compared with some sort of criterion to provide a basis for the most suitable and applicable conclusions. In the context of the present study, the criterion is selected to be the well-known fractional Gaussian noise (fGn). We illustrate the applicability of our method in the context of stock markets....
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
A parameterization that is a modified version of a previous work is proposed for the returns and cor...
We present an alternative method based on random matrix approach that enables to distinguish the res...
We analyze cross correlations between price fluctuations of different stocks using methods of random...
This thesis derives and discusses the properties of the autocorrelation matrix and its relationship ...
We derive the exact form of the eigenvalue spectra of correlation matrices derived from a set of tim...
This dissertation covers the four major parts of my PhD research: i) Modeling instantaneous correlat...
Recent results based on Random Matrix Theory (RMT) suggest that commonly used methods to find correl...
Characterising the behaviour of a random process with respect to returns to previous states is a per...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
We derive the exact form of the eigenvalue spectra of correlation matrices derived from a set of tim...
We study some properties of eigenvalue spectra of financial correlation matrices. In particular, we ...
We study some properties of eigenvalue spectra of financial correlation matrices. In particular, we ...
A framework is proposed for the analysis of non-Gaussian time series under the Gaussian assumption. ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
A parameterization that is a modified version of a previous work is proposed for the returns and cor...
We present an alternative method based on random matrix approach that enables to distinguish the res...
We analyze cross correlations between price fluctuations of different stocks using methods of random...
This thesis derives and discusses the properties of the autocorrelation matrix and its relationship ...
We derive the exact form of the eigenvalue spectra of correlation matrices derived from a set of tim...
This dissertation covers the four major parts of my PhD research: i) Modeling instantaneous correlat...
Recent results based on Random Matrix Theory (RMT) suggest that commonly used methods to find correl...
Characterising the behaviour of a random process with respect to returns to previous states is a per...
International audienceConsider the empirical autocovariance matrix at a given non-zero time lag base...
We derive the exact form of the eigenvalue spectra of correlation matrices derived from a set of tim...
We study some properties of eigenvalue spectra of financial correlation matrices. In particular, we ...
We study some properties of eigenvalue spectra of financial correlation matrices. In particular, we ...
A framework is proposed for the analysis of non-Gaussian time series under the Gaussian assumption. ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Random matrix serves as one of the key tools in understanding the eigen-structure of large dimension...
A parameterization that is a modified version of a previous work is proposed for the returns and cor...