In this paper, we present an innovative method for constructing proper priors for the skewness (shape) parameter in the skew-symmetric family of distributions. The proposed method is based on assigning a prior distribution on the perturbation effect of the shape parameter, which is quantified in terms of the total variation distance. We discuss strategies to translate prior beliefs about the asymmetry of the data into an informative prior distribution of this class. We show via a Monte Carlo simulation study that our non-informative priors induce posterior distributions with good frequentist properties, similar to those of the Jeffreys prior. Our informative priors yield better results than their competitors from the literature. We also pro...
This paper deals with the issue of perform- ing a default Bayesian analysis on the shape parameter o...
We introduce a general perspective on the introduction of skewness into symmetric distributions. Mak...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...
In this paper, we present an innovative method for constructing proper priors for the skewness (shap...
peer reviewedSkew-symmetric distributions are a popular family of flexible distributions that conven...
Abstract We study the Jeffreys prior of the skewness parameter of a general class of scalar skew-s...
We study the Jeffreys prior and its properties for the shape parameter of univariate skew-t distribu...
This paper addresses the use of Jeffreys priors in the context of univariate threeparameter locatio...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
We introduce the family of univariate double two–piece distributions, obtained by using a density– ...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
We formalise and generalise the definition of the family of univariate double two–piece distribution...
We develop a Bayesian approach for the selection of skew in multivariate skew t distributions constr...
This thesis is concerned with the study of distributional and inferential aspects of some classes o...
This paper deals with the issue of perform- ing a default Bayesian analysis on the shape parameter o...
We introduce a general perspective on the introduction of skewness into symmetric distributions. Mak...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...
In this paper, we present an innovative method for constructing proper priors for the skewness (shap...
peer reviewedSkew-symmetric distributions are a popular family of flexible distributions that conven...
Abstract We study the Jeffreys prior of the skewness parameter of a general class of scalar skew-s...
We study the Jeffreys prior and its properties for the shape parameter of univariate skew-t distribu...
This paper addresses the use of Jeffreys priors in the context of univariate threeparameter locatio...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
We introduce the family of univariate double two–piece distributions, obtained by using a density– ...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
We formalise and generalise the definition of the family of univariate double two–piece distribution...
We develop a Bayesian approach for the selection of skew in multivariate skew t distributions constr...
This thesis is concerned with the study of distributional and inferential aspects of some classes o...
This paper deals with the issue of perform- ing a default Bayesian analysis on the shape parameter o...
We introduce a general perspective on the introduction of skewness into symmetric distributions. Mak...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...