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Activity Number: 486 - Advances in Spatial and Spatio-Temporal Statistics
Type: Contributed
Date/Time: Wednesday, August 10, 2022 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics and the Environment
Abstract #323155
Title: On Information About Covariance Parameters in Gaussian Matern Random Fields
Author(s): Victor De Oliveira* and Zifei Han
Companies: The University of Texas at San Antonio and University of International Business and Economics
Keywords: Fisher information; Geostatistics; Sampling design; Smoothness parameter
Abstract:

The Matérn family of covariance functions is currently the most commonly used for the analysis of geostatistical data due to its ability to describe different smoothness behaviors. Yet, in many applications the smoothness parameter is set at an arbitrary value. This practice is due to unqualified claims in the literature stating that geostatistical data have little or no information about the smoothness parameter. This work critically investigates this claim and shows it is not true in general. Specifically, it is shown that the information the data have about the correlation parameters varies substantially depending on the true model and sampling design and, in particular, the information about the smoothness parameter can be large, in some cases larger than the information about the range parameter. In light of these findings, we suggest to abandon the aforementioned practice and instead establish inferences from data–based estimates of both range and smoothness parameters, especially for strongly dependent non–smooth process observed on an irregular sampling design. A data set of daily rainfall totals is used to motivate and illustrate the proposed methods.


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

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