Given a zero-mean Gaussian random field with a covariance function that belongs to a parametric family of covariance functions, we introduce a new notion of likelihood approximations, termed truncated-likelihood functions. Truncated-likelihood functions are based on direct functional approximations of the presumed family of covariance functions. For compactly supported covariance functions, within an increasing-domain asymptotic framework, we provide sufficient conditions under which consistency and asymptotic normality of estimators based on truncated-likelihood functions are preserved. We apply our result to the family of generalized Wendland covariance functions and discuss several examples of Wendland approximations. For families of cov...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
The best linear unbiased predictor (BLUP) is called a kriging predictor and has been widely used to ...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
Given a zero-mean Gaussian random field with a covariance function that belongs to a parametric fami...
Given a zero-mean Gaussian random field with a covariance function that belongs to a parametric fami...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
In recent literature there has been a growing interest in the construction of covariance models for ...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
Maximum likelihood is an attractive method of estimating covariance parameters in spatial models bas...
AbstractIn Cator and Lopuhaä (arXiv:math.ST/0907.0079) [3], an asymptotic expansion for the minimum ...
The Matern family of covariance functions has played a central role in spatial statistics for decade...
In this paper we present novel results on the asymptotic be-havior of the so-called Ibragimov minimu...
Parameter estimation for and prediction of spatially or spatio-temporally correlated random processe...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
The best linear unbiased predictor (BLUP) is called a kriging predictor and has been widely used to ...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...
Given a zero-mean Gaussian random field with a covariance function that belongs to a parametric fami...
Given a zero-mean Gaussian random field with a covariance function that belongs to a parametric fami...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
We study estimation and prediction of Gaussian random fields with covariance models belonging to the...
Abstract: When the spatial sample size is extremely large which occurs in many environmental and eco...
In recent literature there has been a growing interest in the construction of covariance models for ...
Two asymptotic frameworks, increasing domain asymptotics and infill asymptotics, have been advanced ...
Maximum likelihood is an attractive method of estimating covariance parameters in spatial models bas...
AbstractIn Cator and Lopuhaä (arXiv:math.ST/0907.0079) [3], an asymptotic expansion for the minimum ...
The Matern family of covariance functions has played a central role in spatial statistics for decade...
In this paper we present novel results on the asymptotic be-havior of the so-called Ibragimov minimu...
Parameter estimation for and prediction of spatially or spatio-temporally correlated random processe...
In the last years there has been a growing interest in proposing methods for estimating covariance f...
The best linear unbiased predictor (BLUP) is called a kriging predictor and has been widely used to ...
Gaussian process models typically contain finite dimensional parameters in the covariance function t...