This is the publisher’s final pdf. The published article is copyrighted by the International Society for Bayesian Analysis and can be found at: http://projecteuclid.org/euclid.ba.Eliciting information from experts for use in constructing prior distributions for logistic regression coefficients can be challenging. The task is especially difficult when the model contains many predictor variables, because the expert is asked to provide summary information about the probability of “success” for many subgroups of the population. Often, however, experts are confident only in their assessment of the population as a whole. This paper is about incorporating such overall information easily into a logistic regression data analysis using g-priors. We p...
Abstract: To elicit an informative prior distribution for a normal linear model or a gamma generaliz...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
Revised Version of the paperIn this paper we introduce a novel Bayesian data augmentation approach f...
Consider a set of categorical variables where at least one of them is binary. The log-linear model t...
Consider a set of categorical variables where at least one of them is binary. The log-linear model t...
We propose a new prior distribution for classical (nonhierarchical) logistic regression models, cons...
In the last lecture, we mentioned the use of g-priors for linear regression in a Bayesian framework....
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
To elicit an informative prior distribution for a normal linear model or a gamma generalized linear ...
We examine the issue of variable selection in linear regression modelling, where we have a potential...
We present a command, penlogit, for approximate Bayesian logistic regression using penalized likelih...
A "partially improper" Gaussian prior is considered for Bayesian inference in logistic reg...
Eliciting appropriate prior information from experts for a statistical model is no easy task. Expres...
Top: Prior distribution used for the intercept parameter β0 (Eq 12), which represents persons with n...
In this article, we propose a new generalized multivariate log-gamma distribution. We consider the u...
Abstract: To elicit an informative prior distribution for a normal linear model or a gamma generaliz...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
Revised Version of the paperIn this paper we introduce a novel Bayesian data augmentation approach f...
Consider a set of categorical variables where at least one of them is binary. The log-linear model t...
Consider a set of categorical variables where at least one of them is binary. The log-linear model t...
We propose a new prior distribution for classical (nonhierarchical) logistic regression models, cons...
In the last lecture, we mentioned the use of g-priors for linear regression in a Bayesian framework....
The generalized lognormal distribution plays an important role in various aspects of life testing ex...
To elicit an informative prior distribution for a normal linear model or a gamma generalized linear ...
We examine the issue of variable selection in linear regression modelling, where we have a potential...
We present a command, penlogit, for approximate Bayesian logistic regression using penalized likelih...
A "partially improper" Gaussian prior is considered for Bayesian inference in logistic reg...
Eliciting appropriate prior information from experts for a statistical model is no easy task. Expres...
Top: Prior distribution used for the intercept parameter β0 (Eq 12), which represents persons with n...
In this article, we propose a new generalized multivariate log-gamma distribution. We consider the u...
Abstract: To elicit an informative prior distribution for a normal linear model or a gamma generaliz...
Bayesian model selection poses two main challenges: the specification of parameter priors for all mo...
Revised Version of the paperIn this paper we introduce a novel Bayesian data augmentation approach f...