The covariance structure of spatial Gaussian predictors (aka Kriging predictors) is generally modeled by parameterized covariance functions; the associated hyperparameters in turn are estimated via the method of maximum likelihood. In this work, the asymptotic behavior of the maximum likelihood of spatial Gaussian predictor models as a function of its hyperparameters is investigated theoretically. Asymptotic sandwich bounds for the maximum likelihood function in terms of the condition number of the associated covariance matrix are established. As a consequence, the main result is obtained: optimally trained nondegenerate spatial Gaussian processes cannot feature arbitrary ill-conditioned correlation matrices. The implication of this ...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
In the Big Data era, with the ubiquity of geolocation sensors in particular, massive datasets exhibi...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...
There has been a growing interest in providing models for multivariate spatial processes. A majority...
The best linear unbiased predictor (BLUP) is called a kriging predictor and has been widely used to ...
The Gaussian distribution is the most fundamental distribution in statistics. However, many applicat...
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The s...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
The problem of classification of spatial Gaussian process observation into one of two populations s...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
Kriging based on Gaussian random fields is widely used in reconstructing unknown functions. The krig...
International audienceThe asymptotic analysis of covariance parameter estimation of Gaussian process...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
In the Big Data era, with the ubiquity of geolocation sensors in particular, massive datasets exhibi...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...
There has been a growing interest in providing models for multivariate spatial processes. A majority...
The best linear unbiased predictor (BLUP) is called a kriging predictor and has been widely used to ...
The Gaussian distribution is the most fundamental distribution in statistics. However, many applicat...
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic frame-work. The s...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
The problem of classification of spatial Gaussian process observation into one of two populations s...
We study parameter estimation in linear Gaussian covariance models, which are p-dimensional Gaussian...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
Kriging based on Gaussian random fields is widely used in reconstructing unknown functions. The krig...
International audienceThe asymptotic analysis of covariance parameter estimation of Gaussian process...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
International audienceIn parametric estimation of covariance function of Gaussian processes, it is o...
In the Big Data era, with the ubiquity of geolocation sensors in particular, massive datasets exhibi...
The emergence of dense spatial data sets allows us to examine spatial processes on a local level. Th...