This paper carries out an investigation of the orthogonal-polynomial approach to reshaping symmetric distributions to fit in with data requirements so as to cover the multivariate case. With this objective in mind, reference is made to the class of spherical distributions, given that they provide a natural multivariate generalization of univariate even densities. After showing how to tailor a spherical distribution via orthogonal polynomials to better comply with kurtosis requirements, we provide operational conditions for the positiveness of the resulting multivariate Gram–Charlier-like expansion, together with its kurtosis range. Finally, the approach proposed here is applied to some selected spherical distributions
Three types of characterizations for two subclasses of spherical distributions are presented. Within...
An in-dimensional random vector X is said to have a spherical distribution if and only if its charac...
AbstractWhen a multivariate elliptical distribution is used as the basis in multivariate analysis al...
This paper carries out an investigation of the orthogonal-polynomial approach to reshaping symmetric...
This paper carries out an investigation of the orthogonal-polynomial approach to reshaping symmetric...
Spherical distributions arise quite naturally as multivariate versions of univariate (even) densitie...
This article deals with the problem of tailoring distributions to embody evidence of moments and dep...
This article deals with the problem of tailoring distributions to embody evidence of moments and dep...
Followiong on a reappraisal of othogonal-polynomial role in characterizing a distribution, this pape...
Followiong on a reappraisal of othogonal-polynomial role in characterizing a distribution, this pape...
In this paper, we will tackle the issue of accounting for skewness and potentially severe excess ku...
In this paper, we will tackle the issue of accounting for skewness and potentially severe excess kur...
In this paper, we will tackle the issue of accounting for skewness and potentially severe excess kur...
This paper develops an approach based on Gram–Charlier-like expansions for modeling financial series...
A probability distribution is called spherically symmetric if it is invariant with respect to rotati...
Three types of characterizations for two subclasses of spherical distributions are presented. Within...
An in-dimensional random vector X is said to have a spherical distribution if and only if its charac...
AbstractWhen a multivariate elliptical distribution is used as the basis in multivariate analysis al...
This paper carries out an investigation of the orthogonal-polynomial approach to reshaping symmetric...
This paper carries out an investigation of the orthogonal-polynomial approach to reshaping symmetric...
Spherical distributions arise quite naturally as multivariate versions of univariate (even) densitie...
This article deals with the problem of tailoring distributions to embody evidence of moments and dep...
This article deals with the problem of tailoring distributions to embody evidence of moments and dep...
Followiong on a reappraisal of othogonal-polynomial role in characterizing a distribution, this pape...
Followiong on a reappraisal of othogonal-polynomial role in characterizing a distribution, this pape...
In this paper, we will tackle the issue of accounting for skewness and potentially severe excess ku...
In this paper, we will tackle the issue of accounting for skewness and potentially severe excess kur...
In this paper, we will tackle the issue of accounting for skewness and potentially severe excess kur...
This paper develops an approach based on Gram–Charlier-like expansions for modeling financial series...
A probability distribution is called spherically symmetric if it is invariant with respect to rotati...
Three types of characterizations for two subclasses of spherical distributions are presented. Within...
An in-dimensional random vector X is said to have a spherical distribution if and only if its charac...
AbstractWhen a multivariate elliptical distribution is used as the basis in multivariate analysis al...