The use of proper prior densities in regression models with multivariate non-Normal elliptical error distributions is examined when the scale matrix is known up to a precision factor T, treated as a nuisance parameter. Marginally equivalent models preserve the convenient predictive and posterior results on the parameter of interest B obtained in the reference case of the Normal model and its conditionally natural conjugate gamma prior. Prior densities inducing this property are derived for two special cases of non-Normal elliptical densities representing very different patterns of tail behavior. In a linear framework, so-called semi-conjugate prior structures are defined as leading to marginal equivalence to a Normal data density with a ful...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
The multivariate elliptical model is considered, such as to derive subjective Bayesian estimators of...
In this paper the prediction problem is considered for linear regression models with elliptical erro...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
Broadening the stochastic assumptions on the error terms of regression models was prompted by the an...
Broadening the stochastic assumptions on the error terms of regression models was prompted by the an...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
This paper develops Bayesian approaches to deal with linear elliptical regression models that differ...
The problem of estimation has been widely investigated with all different kinds of assumptions. Thi...
In this paper the prediction problem is considered for linear regression models with elliptical erro...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
The multivariate elliptical model is considered, such as to derive subjective Bayesian estimators of...
In this paper the prediction problem is considered for linear regression models with elliptical erro...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
The use of proper prior densities in regression models with multivariate non-Normal elliptical error...
Broadening the stochastic assumptions on the error terms of regression models was prompted by the an...
Broadening the stochastic assumptions on the error terms of regression models was prompted by the an...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
This paper develops Bayesian approaches to deal with linear elliptical regression models that differ...
The problem of estimation has been widely investigated with all different kinds of assumptions. Thi...
In this paper the prediction problem is considered for linear regression models with elliptical erro...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
In the general multivariate elliptical class of data densities we define a scalar precision paramete...
The multivariate elliptical model is considered, such as to derive subjective Bayesian estimators of...
In this paper the prediction problem is considered for linear regression models with elliptical erro...