Multivariate geostatistics is based on modelling all covariances between all possible combinations of two or more variables at any sets of locations in a continuously indexed domain. Multivariate spatial covariance models need to be built with care, since any covariance matrix that is derived from such a model must be nonnegative-definite. In this article, we develop a conditional approach for spatial-model construction whose validity conditions are easy to check. We start with bivariate spatial covariance models and go on to demonstrate the approach\u27s connection to multivariate models defined by networks of spatial variables. In some circumstances, such as modelling respiratory illness conditional on air pollution, the direction of cond...
In recent years, more and more data are becoming available on the more disparate phenomena in a geo-...
This thesis addresses some problems in multivariate spatial and spatio-temporal modeling using a bay...
This paper describes a method based on multivariate geostatistics and redundancy analysis for studyi...
Multivariate geostatistics is based on modelling all covariances between all possible combinations o...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
We would like to thank Marc Genton and William Kleiber (hereafter, GK) for their informative review,...
Physical processes rarely occur in isolation, rather they influence and interact with one another. T...
Inherent to a spatial variable is the unit of support at which it is measured. In many studies, vari...
The geostatistical analysis of multivariate spatial data for inference as well as joint predictions ...
Multivariate spatial-statistical models are often used when modeling environmental and socio-demogra...
Statistical methods that are both multivariate and spatial should, along with the GIS, be an integra...
Graduation date: 2008In this thesis we focus on a graphical model for multivariate spatially\ud corr...
Covariance modeling plays a key role in the spatial data analysis as it provides important informati...
In the past decade conditional autoregressive modelling specifications have found considerable appli...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
In recent years, more and more data are becoming available on the more disparate phenomena in a geo-...
This thesis addresses some problems in multivariate spatial and spatio-temporal modeling using a bay...
This paper describes a method based on multivariate geostatistics and redundancy analysis for studyi...
Multivariate geostatistics is based on modelling all covariances between all possible combinations o...
The statistical modelling of spatial data plays an important role in the geological and environmenta...
We would like to thank Marc Genton and William Kleiber (hereafter, GK) for their informative review,...
Physical processes rarely occur in isolation, rather they influence and interact with one another. T...
Inherent to a spatial variable is the unit of support at which it is measured. In many studies, vari...
The geostatistical analysis of multivariate spatial data for inference as well as joint predictions ...
Multivariate spatial-statistical models are often used when modeling environmental and socio-demogra...
Statistical methods that are both multivariate and spatial should, along with the GIS, be an integra...
Graduation date: 2008In this thesis we focus on a graphical model for multivariate spatially\ud corr...
Covariance modeling plays a key role in the spatial data analysis as it provides important informati...
In the past decade conditional autoregressive modelling specifications have found considerable appli...
There is an increasing wealth of multivariate spatial and multivariate spatio-temporal data appearin...
In recent years, more and more data are becoming available on the more disparate phenomena in a geo-...
This thesis addresses some problems in multivariate spatial and spatio-temporal modeling using a bay...
This paper describes a method based on multivariate geostatistics and redundancy analysis for studyi...