We introduce a new latent variable model with count variable indicators, where usual linear parametric effects of covariates, nonparametric effects of continuous covariates and spatial effects on the continuous latent variables are modelled through a geoadditive predictor. Bayesian modelling of nonparametric functions and spatial effects is based on penalized spline and Markov random field priors. Full Bayesian inference is performed via an auxiliary variable Gibbs sampling technique, using a recent suggestion of Frühwirth-Schnatter and Wagner (2006). As an advantage, our Poisson indicator latent variable model can be combined with semiparametric latent variable models for mixed binary, ordinal and continuous indicator variables within an u...
In this work we deal with multivariate spatial non-Gaussian data, by analyzing, in particular, varia...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
In spatiotemporal analysis, the effect of a covariate on the outcome usually varies across areas and...
We introduce a new latent variable model with count variable indicators, where usual linear parametr...
In this article we introduce a latent variable model (LVM) for mixed ordinal and continuous response...
Abstract Model-based approaches for the analysis of areal count data are commonplace in spatiotempor...
We develop Bayesian nonparametric models for spatially indexed data of mixed type. Our work is motiv...
Though in the last decade many works have appeared in the literature dealing with model-based extens...
This thesis discusses a latent variable model (LVM) which is based on a Bayesian approach and is est...
Count data models have a large number of pratical applications. However there can be several problem...
Generalized linear models are routinely used in many environment statistics problems such as earthqu...
In this paper we present a Gibbs sampler for a Poisson model including spatial effects. Frühwirth-Sc...
The present work is concerned with the analysis of non Gaussian multivariate spatial data and, in pa...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
In this work we deal with multivariate spatial non-Gaussian data, by analyzing, in particular, varia...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
In spatiotemporal analysis, the effect of a covariate on the outcome usually varies across areas and...
We introduce a new latent variable model with count variable indicators, where usual linear parametr...
In this article we introduce a latent variable model (LVM) for mixed ordinal and continuous response...
Abstract Model-based approaches for the analysis of areal count data are commonplace in spatiotempor...
We develop Bayesian nonparametric models for spatially indexed data of mixed type. Our work is motiv...
Though in the last decade many works have appeared in the literature dealing with model-based extens...
This thesis discusses a latent variable model (LVM) which is based on a Bayesian approach and is est...
Count data models have a large number of pratical applications. However there can be several problem...
Generalized linear models are routinely used in many environment statistics problems such as earthqu...
In this paper we present a Gibbs sampler for a Poisson model including spatial effects. Frühwirth-Sc...
The present work is concerned with the analysis of non Gaussian multivariate spatial data and, in pa...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
In this work we deal with multivariate spatial non-Gaussian data, by analyzing, in particular, varia...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
In spatiotemporal analysis, the effect of a covariate on the outcome usually varies across areas and...