Necessary and sufficient conditions for asymptotically optimal linear prediction of random fields on compact metric spaces

Journal Article (2022)
Author(s)

K. Kirchner (TU Delft - Analysis, TU Delft - Delft Institute of Applied Mathematics)

David Bolin (King Abdullah University of Science and Technology)

Research Group
Analysis
Copyright
© 2022 K. Kirchner, David Bolin
DOI related publication
https://doi.org/10.1214/21-AOS2138
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 K. Kirchner, David Bolin
Research Group
Analysis
Issue number
2
Volume number
50
Pages (from-to)
1038-1065
Reuse Rights

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Abstract

Optimal linear prediction (aka. kriging) of a random field {Z(x)} x∈X indexed by a compact metric space (X, dX ) can be obtained if the mean value function m: X →R and the covariance function ∂: X × X →R of Z are known. We consider the problem of predicting the value of Z(x*) at some location x*∈ X based on observations at locations {xj }nj =1, which accumulate at x*as n→∞(or, more generally, predicting φ(Z) based on {φj (Z)}nj =1 for linear functionals φ,φ1, . . . , φn). Our main result characterizes the asymptotic performance of linear predictors (as n increases) based on an incorrect second-order structure (m, ∂), without any restrictive assumptions on ,∂ ∂ such as stationarity.We, for the first time, provide necessary and sufficient conditions on (m,∂) for asymptotic optimality of the corresponding linear predictor holding uniformly with respect to φ. These general results are illustrated by weakly stationary random fields on X ⊂ Rd with Matérn or periodic covariance functions, and on the sphere X = S2 for the case of two isotropic covariance functions.

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