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Activity Number: 150 - Methods and Computing for Spatial and Spatio-Temporal Data
Type: Contributed
Date/Time: Monday, August 8, 2022 : 10:30 AM to 12:20 PM
Sponsor: Section on Statistics and the Environment
Abstract #322069
Title: Fitting Matérn Smoothness Parameters Using Automatic Differentiation
Author(s): Christopher Geoga* and Oana Marin and Michel Schanen and Michael L. Stein
Companies: Rutgers University and Argonne National Laboratory and Argonne National Laboratory and Rutgers University, Department of Statistics
Keywords: Matérn covariance; Gaussian processes; Automatic differentiation; Bessel functions; Maximum likelihood
Abstract:

The Matérn covariance function is ubiquitous in the application of Gaussian processes to spatial statistics and beyond. Perhaps the most important reason for this is that the smoothness parameter ? gives complete control over the mean-square differentiability of the process, which has significant implications for the behavior of estimated quantities such as interpolants and forecasts. Unfortunately, derivatives of the Matérn covariance function with respect to ? require derivatives of the modified second-kind Bessel function K? with respect to ?. While closed form expressions of these derivatives do exist, they are prohibitively difficult and expensive to compute. In this work, we introduce a new implementation of K? that has been designed to provide derivatives via automatic differentiation, and whose resulting derivatives are significantly faster and more accurate than those computed using finite differences. We provide comprehensive testing for both speed and accuracy and show that our AD solution can be used to build accurate Hessian matrices for second-order maximum likelihood estimation in settings where Hessians built with finite difference approximations completely fail.


Authors who are presenting talks have a * after their name.

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