The most crucial part in Bayesian analysis is the choice of prior distribution. Improper priors are often used in hierarchical Bayesian models due to the lack of information on the hyper parameters at the lower levels of the hierarchy. When improper priors are used, it is important to establish the posterior propriety. Binary random/mixed effects models are commonly used in Meta analyses of binary outcome data. For severely sparse data the likelihood based estimates, obtained from such models, may tend towards the boundary, and this may hamper Bayesian computation and inference even under proper priors. We establish conditions for posterior propriety for such models. The random effects model we consider includes both parameters of interest ...
A previous investigation by Lambert et al., which used computer simulation to examine the influence ...
We are interested in Bayesian modelling of panel data using a mixed effects model with heterogeneity...
The paper is concerned with Bayesian analysis under prior-data conflict, i.e. the situation when obs...
The most crucial part in Bayesian analysis is the choice of prior distribution. Improper priors are ...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
Multivariate random-effects meta-analysis allows the joint synthesis of correlated results from mult...
Structured additive regression comprises many semiparametric regression models such as generalized a...
Bayesian inference enables combination of observations with prior knowledge in the reasoning process...
textabstractA sensible Bayesian model selection or comparison strategy implies selecting the model w...
A "partially improper" Gaussian prior is considered for Bayesian inference in logistic reg...
Contains fulltext : 232638.pdf (Publisher’s version ) (Open Access)In rare disease...
By its capability to deal with the multidimensional nature of uncertainty, imprecise probability pro...
What is a good prior? Actual prior knowledge should be used, but for complex models this is often no...
Purpose. Bayesian random-effects meta-analyses require the analyst to specify the prior distribution...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
A previous investigation by Lambert et al., which used computer simulation to examine the influence ...
We are interested in Bayesian modelling of panel data using a mixed effects model with heterogeneity...
The paper is concerned with Bayesian analysis under prior-data conflict, i.e. the situation when obs...
The most crucial part in Bayesian analysis is the choice of prior distribution. Improper priors are ...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
Multivariate random-effects meta-analysis allows the joint synthesis of correlated results from mult...
Structured additive regression comprises many semiparametric regression models such as generalized a...
Bayesian inference enables combination of observations with prior knowledge in the reasoning process...
textabstractA sensible Bayesian model selection or comparison strategy implies selecting the model w...
A "partially improper" Gaussian prior is considered for Bayesian inference in logistic reg...
Contains fulltext : 232638.pdf (Publisher’s version ) (Open Access)In rare disease...
By its capability to deal with the multidimensional nature of uncertainty, imprecise probability pro...
What is a good prior? Actual prior knowledge should be used, but for complex models this is often no...
Purpose. Bayesian random-effects meta-analyses require the analyst to specify the prior distribution...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
A previous investigation by Lambert et al., which used computer simulation to examine the influence ...
We are interested in Bayesian modelling of panel data using a mixed effects model with heterogeneity...
The paper is concerned with Bayesian analysis under prior-data conflict, i.e. the situation when obs...