Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal data. Subject-specific models often lack a population-average interpretation of the model parameters due to the conditional formulation of random intercepts and slopes. Marginal models frequently lack an underlying distribution for ordinal data, in particular when generalized estimating equations are applied. To overcome these issues, latent variable models underneath the ordinal outcomes with a multivariate logistic distribution can be applied. In this article, we extend the work of O'Brien and Dunson (2004), who studied the multivariate t-distribution with marginal logistic distributions. We use maximum likelihood, instead of a Bayesian appro...
We consider a latent variable model for multivariate ordinal responses accounting for dependencies ...
The chapter describes an overview of the recent developments of latent variable models for ordinal d...
We consider a latent variable model for multivariate ordinal responses accounting for dependencies ...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
\u3cp\u3eSubject-specific and marginal models have been developed for the analysis of longitudinal o...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
An extension of the bivariate model suggested by Dale is proposed for the analysis of dependent ordi...
The paper presents a smooth regression model for ordinal data with longitudinal dependence structure...
We consider a latent variable model for multivariate ordinal responses accounting for dependencies ...
The chapter describes an overview of the recent developments of latent variable models for ordinal d...
We consider a latent variable model for multivariate ordinal responses accounting for dependencies ...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
\u3cp\u3eSubject-specific and marginal models have been developed for the analysis of longitudinal o...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
Subject-specific and marginal models have been developed for the analysis of longitudinal ordinal da...
An extension of the bivariate model suggested by Dale is proposed for the analysis of dependent ordi...
The paper presents a smooth regression model for ordinal data with longitudinal dependence structure...
We consider a latent variable model for multivariate ordinal responses accounting for dependencies ...
The chapter describes an overview of the recent developments of latent variable models for ordinal d...
We consider a latent variable model for multivariate ordinal responses accounting for dependencies ...