Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The spatial sampling is a randomly perturbed regular grid and its deviation from the perfect regular grid is controlled by a single scalar regularity parameter. Consistency and asymp-totic normality are proved for the Maximum Likelihood and Cross Validation estimators of the covariance parameters. The asymptotic covariance matrices of the covariance parameter estima-tors are deterministic functions of the regularity parameter. By means of an exhaustive study of the asymptotic covariance matrices, it is shown that the estimation is improved when the regular grid is strongly perturbed. Hence, an asymptotic confirmation is given to the commonly admit...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
In this note we consider the problem of confidence estimation of the covariance function of a statio...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
International audienceThe asymptotic analysis of covariance parameter estimation of Gaussian process...
AbstractCorrelated multivariate processes have a dependence structure which must be taken into accou...
A simulation study is implemented to study estimators of the covariance structure of a stationary Ga...
Correlated multivariate processes have a dependence structure which must be taken into account when ...
International audienceWe consider a one-dimensional Gaussian process having exponential covariance f...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...
The covariance structure of spatial Gaussian predictors (aka Kriging predictors) is generally model...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
Spatial process models popular in geostatistics often represent the observed data as the sum of a sm...
International audienceWe consider the estimation of the variance and spatial scale parameters of the...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
In this note we consider the problem of confidence estimation of the covariance function of a statio...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
International audienceThe asymptotic analysis of covariance parameter estimation of Gaussian process...
AbstractCorrelated multivariate processes have a dependence structure which must be taken into accou...
A simulation study is implemented to study estimators of the covariance structure of a stationary Ga...
Correlated multivariate processes have a dependence structure which must be taken into account when ...
International audienceWe consider a one-dimensional Gaussian process having exponential covariance f...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...
The covariance structure of spatial Gaussian predictors (aka Kriging predictors) is generally model...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
We provide a computationally and statistically efficient method for estimating the parameters of a s...
Spatial process models popular in geostatistics often represent the observed data as the sum of a sm...
International audienceWe consider the estimation of the variance and spatial scale parameters of the...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
In this note we consider the problem of confidence estimation of the covariance function of a statio...