Open Access
2022 Modeling spatial tail dependence with Cauchy convolution processes
Pavel Krupskii, Raphaël Huser
Author Affiliations +
Electron. J. Statist. 16(2): 6135-6174 (2022). DOI: 10.1214/22-EJS2081

Abstract

We study the class of dependence models for spatial data obtained from Cauchy convolution processes based on different types of kernel functions. We show that the resulting spatial processes have appealing tail dependence properties, such as tail dependence at short distances and independence at long distances with suitable kernel functions. We derive the extreme-value limits of these processes, study their smoothness properties, and detail some interesting special cases. To get higher flexibility at sub-asymptotic levels and separately control the bulk and the tail dependence properties, we further propose spatial models constructed by mixing a Cauchy convolution process with a Gaussian process. We demonstrate that this framework indeed provides a rich class of models for the joint modeling of the bulk and the tail behaviors. Our proposed inference approach relies on matching model-based and empirical summary statistics, and an extensive simulation study shows that it yields accurate estimates. We demonstrate our new methodology by application to a temperature dataset measured at 97 monitoring stations in the state of Oklahoma, US. Our results indicate that our proposed model provides a very good fit to the data, and that it captures both the bulk and the tail dependence structures accurately.

Citation

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Pavel Krupskii. Raphaël Huser. "Modeling spatial tail dependence with Cauchy convolution processes." Electron. J. Statist. 16 (2) 6135 - 6174, 2022. https://doi.org/10.1214/22-EJS2081

Information

Received: 1 September 2021; Published: 2022
First available in Project Euclid: 22 November 2022

arXiv: 2102.07094
MathSciNet: MR4515713
zbMATH: 07633935
Digital Object Identifier: 10.1214/22-EJS2081

Subjects:
Primary: 62H05
Secondary: 60G70 , 62H11

Keywords: copula , extreme-value model , kernel convolution process , short-range spatial dependence , spatial process , tail dependence

Vol.16 • No. 2 • 2022
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