This paper addresses the use of Jeffreys priors in the context of univariate threeparameter location-scale models, where skewness is introduced by differing scale parameters either side of the location. We focus on various commonly used parameterizations for these models. Jeffreys priors are shown not to allow for posterior inference in the wide and practically relevant class of distributions obtained by skewing scale mixtures of normals. Easily checked conditions under which independence Jeffreys priors can be used for valid inference are derived. We empirically investigate the posterior coverage for a number of Bayesian models, which are also used to conduct inference on real data
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
AbstractWe study the Jeffreys prior of the skewness parameter of a general class of scalar skew-symm...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...
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...
In this paper, we present an innovative method for constructing proper priors for the skewness (shap...
In this paper, we present an innovative method for constructing proper priors for the skewness (shap...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
We introduce the family of univariate double two–piece distributions, obtained by using a density– ...
We formalise and generalise the definition of the family of univariate double two–piece distribution...
© 2015 Elsevier B.V. All rights reserved. Bayesian estimators are developed and compared with the ma...
We study several theoretical properties of Jeffreys's prior for binomial regression models. We show ...
This thesis is concerned with the study of distributional and inferential aspects of some classes o...
It has long been asserted that in univariate location-scale models, when concerned with inference fo...
While mixtures of Gaussian distributions have been studied for more than a century, the construction...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
AbstractWe study the Jeffreys prior of the skewness parameter of a general class of scalar skew-symm...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...
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...
In this paper, we present an innovative method for constructing proper priors for the skewness (shap...
In this paper, we present an innovative method for constructing proper priors for the skewness (shap...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
We introduce the family of univariate double two–piece distributions, obtained by using a density– ...
We formalise and generalise the definition of the family of univariate double two–piece distribution...
© 2015 Elsevier B.V. All rights reserved. Bayesian estimators are developed and compared with the ma...
We study several theoretical properties of Jeffreys's prior for binomial regression models. We show ...
This thesis is concerned with the study of distributional and inferential aspects of some classes o...
It has long been asserted that in univariate location-scale models, when concerned with inference fo...
While mixtures of Gaussian distributions have been studied for more than a century, the construction...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
AbstractWe study the Jeffreys prior of the skewness parameter of a general class of scalar skew-symm...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...