Open Access
May 2018 Asymptotic analysis of covariance parameter estimation for Gaussian processes in the misspecified case
François Bachoc
Bernoulli 24(2): 1531-1575 (May 2018). DOI: 10.3150/16-BEJ906

Abstract

In parametric estimation of covariance function of Gaussian processes, it is often the case that the true covariance function does not belong to the parametric set used for estimation. This situation is called the misspecified case. In this case, it has been shown that, for irregular spatial sampling of observation points, Cross Validation can yield smaller prediction errors than Maximum Likelihood. Motivated by this observation, we provide a general asymptotic analysis of the misspecified case, for independent and uniformly distributed observation points. We prove that the Maximum Likelihood estimator asymptotically minimizes a Kullback–Leibler divergence, within the misspecified parametric set, while Cross Validation asymptotically minimizes the integrated square prediction error. In Monte Carlo simulations, we show that the covariance parameters estimated by Maximum Likelihood and Cross Validation, and the corresponding Kullback–Leibler divergences and integrated square prediction errors, can be strongly contrasting. On a more technical level, we provide new increasing-domain asymptotic results for independent and uniformly distributed observation points.

Citation

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François Bachoc. "Asymptotic analysis of covariance parameter estimation for Gaussian processes in the misspecified case." Bernoulli 24 (2) 1531 - 1575, May 2018. https://doi.org/10.3150/16-BEJ906

Information

Received: 1 November 2015; Revised: 1 June 2016; Published: May 2018
First available in Project Euclid: 21 September 2017

zbMATH: 06778372
MathSciNet: MR3706801
Digital Object Identifier: 10.3150/16-BEJ906

Keywords: covariance parameter estimation , Cross validation , Gaussian processes , increasing-domain asymptotics , integrated square prediction error , Kullback–Leibler divergence , maximum likelihood

Rights: Copyright © 2018 Bernoulli Society for Mathematical Statistics and Probability

Vol.24 • No. 2 • May 2018
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