There has been a growing interest in providing models for multivariate spatial processes. A majority of these models specify a parametric matrix covariance function. Based on observations, the parameters are estimated by maximum likelihood or variants thereof. While the asymptotic properties of maximum likelihood estimators for univariate spatial processes have been analyzed in detail, maximum likelihood estimators for multivariate spatial processes have not received their deserved attention yet. In this article, we consider the classical increasing-domain asymptotic setting restricting the minimum distance between the locations. Then, one of the main components to be studied from a theoretical point of view is the asymptotic positive defin...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
An S-estimator of multivariate location and scale minimizes the determinant of the covariance matrix...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
International audienceThere has been a growing interest in providing models for multivariate spatial...
The covariance structure of spatial Gaussian predictors (aka Kriging predictors) is generally model...
AbstractCorrelated multivariate processes have a dependence structure which must be taken into accou...
Correlated multivariate processes have a dependence structure which must be taken into account when ...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The s...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
Abstract. The consistency and asymptotic normality of the spatial sign covariance matrix with unknow...
International audienceThe asymptotic analysis of covariance parameter estimation of Gaussian process...
In this paper, we consider the asymptotic properties of the spatial sign autocovariance matrix for G...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
An S-estimator of multivariate location and scale minimizes the determinant of the covariance matrix...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...
International audienceThere has been a growing interest in providing models for multivariate spatial...
The covariance structure of spatial Gaussian predictors (aka Kriging predictors) is generally model...
AbstractCorrelated multivariate processes have a dependence structure which must be taken into accou...
Correlated multivariate processes have a dependence structure which must be taken into account when ...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The s...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
Abstract. The consistency and asymptotic normality of the spatial sign covariance matrix with unknow...
International audienceThe asymptotic analysis of covariance parameter estimation of Gaussian process...
In this paper, we consider the asymptotic properties of the spatial sign autocovariance matrix for G...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
An S-estimator of multivariate location and scale minimizes the determinant of the covariance matrix...
Spatial autocorrelation (more generally, spatial dependence) occurs when a regression's error term a...