In this article we introduce a latent variable model (LVM) for mixed ordinal and continuous responses, where covariate effects on the continuous latent variables are modelled through a flexible semiparametric predictor. We extend existing LVM with simple linear covariate effects by including nonparametric components for nonlinear effects of continuous covariates and interactions with other covariates as well as spatial effects. Full Bayesian modelling is based on penalized spline and Markov random field priors and is performed by computationally efficient Markov chain Monte Carlo (MCMC) methods. We apply our approach to a large German social science survey which motivated our methodological development
In many practical situations, simple regression models suffer from the fact that the dependence of r...
We propose a semiparametric model for regression and classification problems involving multiple resp...
<p>This thesis develops flexible non- and semiparametric Bayesian models for mixed continuous, order...
In this article we introduce a latent variable model (LVM) for mixed ordinal and continuous response...
This thesis discusses a latent variable model (LVM) which is based on a Bayesian approach and is est...
We introduce a new latent variable model with count variable indicators, where usual linear parametr...
latent variable models, mixed responses, penalized splines, spatial effects, MCMC,
In medical, behavioral, and social-psychological sciences, latent variable models are useful in hand...
This paper presents an approach to Bayesian semiparametric inference for Gaussian multivariate respo...
We develop Bayesian nonparametric models for spatially indexed data of mixed type. Our work is motiv...
We propose a short review between two alternative ways of modeling stability and change of longitu...
Statistics And Social Work This dissertation studies parametric and semiparametric approaches to lat...
A joint model for multivariate mixed ordinal and continuous outcomes with potentially non-random mis...
Latent variable models have been widely used for modeling the dependence structure of multiple outco...
This paper presents a fully Bayesian approach via Gibbs sampling for MIMIC models with ordered categ...
In many practical situations, simple regression models suffer from the fact that the dependence of r...
We propose a semiparametric model for regression and classification problems involving multiple resp...
<p>This thesis develops flexible non- and semiparametric Bayesian models for mixed continuous, order...
In this article we introduce a latent variable model (LVM) for mixed ordinal and continuous response...
This thesis discusses a latent variable model (LVM) which is based on a Bayesian approach and is est...
We introduce a new latent variable model with count variable indicators, where usual linear parametr...
latent variable models, mixed responses, penalized splines, spatial effects, MCMC,
In medical, behavioral, and social-psychological sciences, latent variable models are useful in hand...
This paper presents an approach to Bayesian semiparametric inference for Gaussian multivariate respo...
We develop Bayesian nonparametric models for spatially indexed data of mixed type. Our work is motiv...
We propose a short review between two alternative ways of modeling stability and change of longitu...
Statistics And Social Work This dissertation studies parametric and semiparametric approaches to lat...
A joint model for multivariate mixed ordinal and continuous outcomes with potentially non-random mis...
Latent variable models have been widely used for modeling the dependence structure of multiple outco...
This paper presents a fully Bayesian approach via Gibbs sampling for MIMIC models with ordered categ...
In many practical situations, simple regression models suffer from the fact that the dependence of r...
We propose a semiparametric model for regression and classification problems involving multiple resp...
<p>This thesis develops flexible non- and semiparametric Bayesian models for mixed continuous, order...