International audienceAs most georeferenced data sets are multivariate and concern variables of different types, spatial mapping methods must be able to deal with such data. The main difficulties are the prediction of non-Gaussian variables and the modeling of the dependence between processes. The aim of this article is to present a new hierarchical Bayesian approach that permits simultaneous modeling of dependent Gaussian, count, and ordinal spatial fields. This approach is based on spatial generalized linear mixed models. We use a moving average approach to model the spatial dependence between the processes. The method is first validated through a simulation study. We show that the multivariate model has better predictive abilities than t...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
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 types, spatial m...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Multivariate spatially-oriented data sets are prevalent in the environmental and physical sciences.S...
Multivariate spatially-oriented data sets are prevalent in the environmental and physical sciences.S...
Apparent spatial dependence might arise in either of two dierent ways: from spatial correlation, or ...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
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 types, spatial m...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
As most georeferenced data sets are multivariate and concern variables of different kinds, spatial m...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
Multivariate spatially-oriented data sets are prevalent in the environmental and physical sciences.S...
Multivariate spatially-oriented data sets are prevalent in the environmental and physical sciences.S...
Apparent spatial dependence might arise in either of two dierent ways: from spatial correlation, or ...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Full inference for large spatial databases incorporating spatial association in a stochastic fashion...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
The present work is concerned with the analysis of non Gaussian multivariate spatial data and, in pa...