August 2024 The Matérn Model: A Journey Through Statistics, Numerical Analysis and Machine Learning
Emilio Porcu, Moreno Bevilacqua, Robert Schaback, Chris J. Oates
Author Affiliations +
Statist. Sci. 39(3): 469-492 (August 2024). DOI: 10.1214/24-STS923

Abstract

The Matérn model has been a cornerstone of spatial statistics for more than half a century. More recently, the Matérn model has been exploited in disciplines as diverse as numerical analysis, approximation theory, computational statistics, machine learning, and probability theory. In this article, we take a Matérn-based journey across these disciplines. First, we reflect on the importance of the Matérn model for estimation and prediction in spatial statistics, establishing also connections to other disciplines in which the Matérn model has been influential. Then, we position the Matérn model within the literature on big data and scalable computation: the SPDE approach, the Vecchia likelihood approximation, and recent applications in Bayesian computation are all discussed. Finally, we review recent devlopments, including flexible alternatives to the Matérn model, whose performance we compare in terms of estimation, prediction, screening effect, computation, and Sobolev regularity properties.

Funding Statement

Moreno Bevilacqua acknowledges financial support from Grant FONDECYT 1240308 and ANID/PIA/ ANILLOS ACT210096 and ANID project Data Observatory Foundation DO210001 from the Chilean government and project MATH-AMSUD 22-MATH-06 (AMSUD 220041).

Acknowledgments

We thank the Associate Editor and three anonymous reviewers for their thorough reading and criticisms that allowed for an improved version of the manuscript. We are very grateful to Toni Karvonen for pointing out an important technicality about Sobolev spaces associated with the Matérn kernel.

Citation

Download Citation

Emilio Porcu. Moreno Bevilacqua. Robert Schaback. Chris J. Oates. "The Matérn Model: A Journey Through Statistics, Numerical Analysis and Machine Learning." Statist. Sci. 39 (3) 469 - 492, August 2024. https://doi.org/10.1214/24-STS923

Information

Published: August 2024
First available in Project Euclid: 28 June 2024

Digital Object Identifier: 10.1214/24-STS923

Keywords: approximation theory , Compact support , Covariance , ‎kernel‎ , kriging , machine learning , maximum likelihood , reproducing kernel Hilbert spaces , Sobolev Spaces , spatial statistics

Rights: Copyright © 2024 Institute of Mathematical Statistics

JOURNAL ARTICLE
24 PAGES

This article is only available to subscribers.
It is not available for individual sale.
+ SAVE TO MY LIBRARY

Vol.39 • No. 3 • August 2024
Back to Top