Stable distributions are important family of parametric distributions widely used in signal processing as well as in mathematical finance.Estimation of the parameters of this model, is not quite straightforward due to the fact that there is no closed-form expression for their probability density function. Besides the computationally intensive maximum likelihood method where the density has to be evaluated numerically, there are some existing adhoc methods such as the quantile method, and a regression based method. These are introduced in Chapter 2.In this thesis, we introduce two new approaches: One, a spacing based estimation method introduced in Chapter 3 and two, an indirect inference method considered in Chapter 4.Simulation studies s...
AbstractAlthough there are several software products dealing with the issue of simulating and estima...
For general stable distribution, cumulant function based parameter estimators are proposed. Extensiv...
Usual inference methods for stable distributions are typically based on limit distributions. But asy...
This article deals with the estimation of the parameters of an -stable distribution by the indirect ...
This paper concerns the estimation of the parameters that describe a stable distribution. Stable dis...
Title: Stable distributions and application to finance Author: Vadym Omelchenko Department: Departme...
This article deals with the estimation of the parameters of an α-stable dis-tribution with indirect ...
summary:In this article we propose a method of parameters estimation for the class of discrete stabl...
The discrete stable family constitutes an interesting two-parameter model of distributions on the no...
2 We propose an estimate of the stability parameter α of a stable distri-bution through the idea of ...
summary:In this paper, we present a parameter estimation method for sub-Gaussian stable distribution...
Stable distributions are extensively used to analyze earnings of financial assets, such as exchange ...
In this paper, we present a parameter estimation method for sub-Gaussian stable distribu-tions. Our ...
textabstractThis paper discusses inferential procedures for the family of stable distributions, when...
Fitting general stable laws to data by maximum likelihood is important but difficult. This is why mu...
AbstractAlthough there are several software products dealing with the issue of simulating and estima...
For general stable distribution, cumulant function based parameter estimators are proposed. Extensiv...
Usual inference methods for stable distributions are typically based on limit distributions. But asy...
This article deals with the estimation of the parameters of an -stable distribution by the indirect ...
This paper concerns the estimation of the parameters that describe a stable distribution. Stable dis...
Title: Stable distributions and application to finance Author: Vadym Omelchenko Department: Departme...
This article deals with the estimation of the parameters of an α-stable dis-tribution with indirect ...
summary:In this article we propose a method of parameters estimation for the class of discrete stabl...
The discrete stable family constitutes an interesting two-parameter model of distributions on the no...
2 We propose an estimate of the stability parameter α of a stable distri-bution through the idea of ...
summary:In this paper, we present a parameter estimation method for sub-Gaussian stable distribution...
Stable distributions are extensively used to analyze earnings of financial assets, such as exchange ...
In this paper, we present a parameter estimation method for sub-Gaussian stable distribu-tions. Our ...
textabstractThis paper discusses inferential procedures for the family of stable distributions, when...
Fitting general stable laws to data by maximum likelihood is important but difficult. This is why mu...
AbstractAlthough there are several software products dealing with the issue of simulating and estima...
For general stable distribution, cumulant function based parameter estimators are proposed. Extensiv...
Usual inference methods for stable distributions are typically based on limit distributions. But asy...