AbstractThis article is concerned with hierarchical prior distributions and the effect of replacing the distribution of a component in the hierarchy with a diffuse distribution where all nondiffuse distributions are multivariate normal. Let f denote the posterior density function and g = gm, the approximation to f obtained by truncating the hierarchy at stage m. The Kullback-Leibler information index, I(f, g) = ∫ f log(fg), will be used to measure the accuracy of g to avoid declaring specific objectives such as estimation or prediction. It is intuitively plausible that g will be increasingly more accurate as m increases; we show by theorems and two examples that this is sometimes but not always true. In the second example the behavior of I(...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In some linear models, such as those with interactions, it is natural to include the relationship be...
AbstractThe multivariate normal regression model, in which a vector y of responses is to be predicte...
AbstractThis article is concerned with hierarchical prior distributions and the effect of replacing ...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
This paper argues that the half-Cauchy distribution should replace the inverse-Gamma distribution as...
Bayesian Hierarchical models has been widely used in modern statistical application. To deal with th...
The infinite mixture of normals model has become a popular method for density estimation problems. T...
Various noninformative prior distributions have been suggested for scale parameters in hierarchical ...
Abstract. Various noninformative prior distributions have been suggested for scale parameters in hie...
In this paper we derive the Bayes estimates of the location parameter of normal and lognormal distri...
Hierarchical Bayesian analysis is extensively utilized in statistical practice. Surprisingly, howeve...
textMany prior distributions are suggested for variance parameters in the hierarchical model. The “N...
This thesis consists of results relating to the theoretical and computational advances in modeling t...
The use of hierarchical Bayesian models in statistical practice is extensive, yet it is dangerous to...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In some linear models, such as those with interactions, it is natural to include the relationship be...
AbstractThe multivariate normal regression model, in which a vector y of responses is to be predicte...
AbstractThis article is concerned with hierarchical prior distributions and the effect of replacing ...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
This paper argues that the half-Cauchy distribution should replace the inverse-Gamma distribution as...
Bayesian Hierarchical models has been widely used in modern statistical application. To deal with th...
The infinite mixture of normals model has become a popular method for density estimation problems. T...
Various noninformative prior distributions have been suggested for scale parameters in hierarchical ...
Abstract. Various noninformative prior distributions have been suggested for scale parameters in hie...
In this paper we derive the Bayes estimates of the location parameter of normal and lognormal distri...
Hierarchical Bayesian analysis is extensively utilized in statistical practice. Surprisingly, howeve...
textMany prior distributions are suggested for variance parameters in the hierarchical model. The “N...
This thesis consists of results relating to the theoretical and computational advances in modeling t...
The use of hierarchical Bayesian models in statistical practice is extensive, yet it is dangerous to...
Hierarchical models are suitable and very natural to model many real life phenomena, where data aris...
In some linear models, such as those with interactions, it is natural to include the relationship be...
AbstractThe multivariate normal regression model, in which a vector y of responses is to be predicte...