Standard geostatistical models assume second order stationarity of the underlying Random Function. In some instances, there is little reason to expect the spatial dependence structure to be stationary over the whole region of interest. In this paper, we introduce a new model for second order non stationary Random Functions as a convolution of an orthogonal random measure with a spatially varying random weighting function. This new model is a generalization of the common convolution model where a non-random weighting function is used. The resulting class of non-stationary covariance functions is very general, flexible and allows to retrieve classes of closed-form non-stationary covariance functions known from the literature, for a suitable c...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
We describe a framework for constructing nonsta- tionary nonseparable random fields that are based o...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...
International audienceStandard geostatistical models assume second order stationarity for the underl...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
Les fonctions aléatoires stationnaires ont été utilisées avec succès dans les applications géostatis...
Stationary Random Functions have been successfully applied in geostatistical applications for decade...
In this article we address two important issues common to the analysis of large spatial datasets. On...
International audienceStationary Random Functions have been successfully applied in geostatistical a...
In spite of the interest in and appeal of convolution-based approaches for nonstationary spatial mod...
[[abstract]]We propose a method for estimating nonstationary spatial covariance functions by represe...
Spatial and spatio-temporal phenomena are commonly modelled as Gaussian processes via the geostatist...
International audienceStationary random functions have been successfully applied in geostatistical a...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
We describe a framework for constructing nonsta- tionary nonseparable random fields that are based o...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...
International audienceStandard geostatistical models assume second order stationarity for the underl...
Stationary Random Functions have been sucessfully applied in geostatistical applications for decades...
Les fonctions aléatoires stationnaires ont été utilisées avec succès dans les applications géostatis...
Stationary Random Functions have been successfully applied in geostatistical applications for decade...
In this article we address two important issues common to the analysis of large spatial datasets. On...
International audienceStationary Random Functions have been successfully applied in geostatistical a...
In spite of the interest in and appeal of convolution-based approaches for nonstationary spatial mod...
[[abstract]]We propose a method for estimating nonstationary spatial covariance functions by represe...
Spatial and spatio-temporal phenomena are commonly modelled as Gaussian processes via the geostatist...
International audienceStationary random functions have been successfully applied in geostatistical a...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
We describe a framework for constructing nonsta- tionary nonseparable random fields that are based o...
The use of covariance kernels is ubiquitous in the field of spatial statistics. Kernels allow data t...