We consider maximum likelihood estimation with data from a bivariate Gaussian process with a separable exponential covariance model under fixed domain asymptotic. We first characterize the equivalence of Gaussian measures under this model. Then consistency and asymptotic distribution for the microergodic parameters are established. A simulation study is presented in order to compare the finite sample behavior of the maximum likelihood estimator with the given asymptotic distribution
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
We study the estimation and prediction of Gaussian processes with spacetime covariance models belong...
We consider maximum likelihood estimation with data from a bivariate Gaussian process with a separab...
We study composite likelihood estimation of the covariance parameters with data from a one-dimension...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
We consider the estimation of the variance and spatial scale parameters of the covariance function o...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
International audienceWe consider a one-dimensional Gaussian process having exponential covariance f...
International audienceWe consider covariance parameter estimation for a Gaussian process under inequ...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
We study the estimation and prediction of Gaussian processes with spacetime covariance models belong...
We consider maximum likelihood estimation with data from a bivariate Gaussian process with a separab...
We study composite likelihood estimation of the covariance parameters with data from a one-dimension...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
We consider the estimation of the variance and spatial scale parameters of the covariance function o...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
International audienceWe consider a one-dimensional Gaussian process having exponential covariance f...
International audienceWe consider covariance parameter estimation for a Gaussian process under inequ...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
We study the estimation and prediction of Gaussian processes with spacetime covariance models belong...