Different conditional independence specifications for ordinal categorical data are compared by calculating a posterior distribution over classes of graphical models. The approach is based on the multivariate ordinal probit model where the data are considered to have arisen as truncated multivariate normal random vectors. By parameterising the precision matrix of the associated multivariate normal in Cholesky form, ordinal data models corresponding to directed acyclic conditional independence graphs for the latent variables can be specified and conveniently computed. Where one or more of the variables are binary this parameterisation is particularly compelling, as necessary constraints on the latent variable distribution can be imposed in su...
Correlated ordinal data are often assumed to arise from an underlying latent continu-ous parametric ...
This dissertation explores different methods to study the dependence structure among many ordinal va...
This paper deals with the Bayesian analysis of graphical models of marginal independence for three ...
This thesis provides a coherent and adaptable methodology for multivariate ordinal and binary data. ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...
The application of certain Bayesian techniques, such as the Bayes factor and model averaging, requir...
Traditional approaches to ordinal regression rely on strong parametric assumptions for the regressio...
We propose a conjugate and conditional conjugate Bayesian analysis of models of marginal independen...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
This thesis is concerned with the graphical modelling of multivariate data. The main aim of graphica...
In this paper we propose a method to calculate the posterior probability of a nondecomposable graphi...
This paper deals with the Bayesian analysis of discrete bi-directed graphical mo\-dels. A missing e...
We present a novel methodology for bayesian model determination in discrete decomposable graphical ...
Correlated ordinal data are often assumed to arise from an underlying latent continu-ous parametric ...
This dissertation explores different methods to study the dependence structure among many ordinal va...
This paper deals with the Bayesian analysis of graphical models of marginal independence for three ...
This thesis provides a coherent and adaptable methodology for multivariate ordinal and binary data. ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
This paper considers the fitting, criticism and comparison of three ordinal regression models -- the...
The application of certain Bayesian techniques, such as the Bayes factor and model averaging, requir...
Traditional approaches to ordinal regression rely on strong parametric assumptions for the regressio...
We propose a conjugate and conditional conjugate Bayesian analysis of models of marginal independen...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
This thesis is concerned with the graphical modelling of multivariate data. The main aim of graphica...
In this paper we propose a method to calculate the posterior probability of a nondecomposable graphi...
This paper deals with the Bayesian analysis of discrete bi-directed graphical mo\-dels. A missing e...
We present a novel methodology for bayesian model determination in discrete decomposable graphical ...
Correlated ordinal data are often assumed to arise from an underlying latent continu-ous parametric ...
This dissertation explores different methods to study the dependence structure among many ordinal va...
This paper deals with the Bayesian analysis of graphical models of marginal independence for three ...