A Bayesian approach is developed for selecting the model that is most supported by the data within a class of marginal models for categorical variables, which are formulated through equality and/or inequality constraints on generalized logits (local, global, continuation, or reverse continuation), generalized log-odds ratios, and similar higher-order interactions. For each constrained model, the prior distribution of the model parameters is specified following the encompassing prior approach. Then, model selection is performed by using Bayes factors estimated through an importance sampling method. The approach is illustrated by three applications based on different datasets, which also include explanatory variables. In connection wi...
An encompassing prior (EP) approach to facilitate Bayesian model selection for nested models with in...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
A Bayesian approach is developed for selecting the model that is most supported by the data within ...
We develop a Bayesian framework for making inference on a class of marginal models for categorical ...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Bayesian model selection with improper priors is not well-defined becauseof the dependence of the ma...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
We explore the performance of three popular model-selection criteria for generalised linear mixed-ef...
This thesis explores approaches to regression that utilise the treatment of covariates as random var...
Abstract: Constrained parameter problems arise in a wide variety of applications. This article deals...
In social and biomedical sciences, testing in contingency tables often involves order restrictions o...
We provide a review of prior distributions for objective Bayesian analysis. We start by examining so...
The expectations that researchers have about the structure in the data can often be formulated in te...
Selecting between competing statistical models is a challenging problem especially when the competin...
An encompassing prior (EP) approach to facilitate Bayesian model selection for nested models with in...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
A Bayesian approach is developed for selecting the model that is most supported by the data within ...
We develop a Bayesian framework for making inference on a class of marginal models for categorical ...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Bayesian model selection with improper priors is not well-defined becauseof the dependence of the ma...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
We explore the performance of three popular model-selection criteria for generalised linear mixed-ef...
This thesis explores approaches to regression that utilise the treatment of covariates as random var...
Abstract: Constrained parameter problems arise in a wide variety of applications. This article deals...
In social and biomedical sciences, testing in contingency tables often involves order restrictions o...
We provide a review of prior distributions for objective Bayesian analysis. We start by examining so...
The expectations that researchers have about the structure in the data can often be formulated in te...
Selecting between competing statistical models is a challenging problem especially when the competin...
An encompassing prior (EP) approach to facilitate Bayesian model selection for nested models with in...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...