To elicit an informative prior distribution for a normal linear model or a gamma generalized linear model (GLM), expert opinion must be quantified about both the regression coefficients and the extra parameters of these models. The latter task has attracted comparatively little attention. In this article, we introduce two elicitation methods that aim to complete the prior structure of the normal and gamma GLMs. First, we develop a method of assessing a conjugate prior distribution for the error variance in normal linear models. The method quantifies an expert's opinions through assessments of a median and conditional medians. Second, we propose a novel method for eliciting a lognormal prior distribution for the scale parameter of gamma GLMs...
In this article, we propose a new generalized multivariate log-gamma distribution. We consider the u...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
An important challenge in analyzing high dimensional data in regression settings is that of facing a...
To elicit an informative prior distribution for a normal linear model or a gamma generalized linear ...
Abstract: To elicit an informative prior distribution for a normal linear model or a gamma generaliz...
An elicitation method is proposed for quantifying subjective opinion about the regression coefficien...
Suitable elicitation methods play a key role in Bayesian analysis of generalized linear models (GLMs...
To incorporate expert opinion into a Bayesian analysis, it must be quantified as a prior distributio...
This paper describes a method for choosing a natural conjugate prior distribution for a normal linea...
We propose a novel class of conjugate priors for the family of generalized linear models. Properties...
Elicitation methods are proposed for quantifying expert opinion about a multivariate normal sampling...
This paper addresses the problem of quantifying expert opinion about a normal linear regression mode...
This software is designed to be used as an aid to the elicitation of personal opinion about un-certa...
- Introduces GLMs in a way that enables readers to understand the unifying structure that underpins ...
Mixtures of Zellner's g-priors have been studied extensively in linear models and have been shown to...
In this article, we propose a new generalized multivariate log-gamma distribution. We consider the u...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
An important challenge in analyzing high dimensional data in regression settings is that of facing a...
To elicit an informative prior distribution for a normal linear model or a gamma generalized linear ...
Abstract: To elicit an informative prior distribution for a normal linear model or a gamma generaliz...
An elicitation method is proposed for quantifying subjective opinion about the regression coefficien...
Suitable elicitation methods play a key role in Bayesian analysis of generalized linear models (GLMs...
To incorporate expert opinion into a Bayesian analysis, it must be quantified as a prior distributio...
This paper describes a method for choosing a natural conjugate prior distribution for a normal linea...
We propose a novel class of conjugate priors for the family of generalized linear models. Properties...
Elicitation methods are proposed for quantifying expert opinion about a multivariate normal sampling...
This paper addresses the problem of quantifying expert opinion about a normal linear regression mode...
This software is designed to be used as an aid to the elicitation of personal opinion about un-certa...
- Introduces GLMs in a way that enables readers to understand the unifying structure that underpins ...
Mixtures of Zellner's g-priors have been studied extensively in linear models and have been shown to...
In this article, we propose a new generalized multivariate log-gamma distribution. We consider the u...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
An important challenge in analyzing high dimensional data in regression settings is that of facing a...