Title of article
Asymptotic analysis of the role of spatial sampling for covariance parameter estimation of Gaussian processes
Author/Authors
Christine Bachoc، نويسنده , , François، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2014
Pages
35
From page
1
To page
35
Abstract
Covariance parameter estimation of Gaussian processes is analyzed in an asymptotic framework. 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 asymptotic normality are proved for the Maximum Likelihood and Cross Validation estimators of the covariance parameters. The asymptotic covariance matrices of the covariance parameter estimators 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 admitted fact that using groups of observation points with small spacing is beneficial to covariance function estimation. Finally, the prediction error, using a consistent estimator of the covariance parameters, is analyzed in detail.
Keywords
Covariance parameter estimation , metamodel , uncertainty quantification , KRIGING , Maximum likelihood , Leave-one-out , increasing-domain asymptotics
Journal title
Journal of Multivariate Analysis
Serial Year
2014
Journal title
Journal of Multivariate Analysis
Record number
1566623
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