À¦°óSMÉçÇø

Event

Catherine (Kate) Calder (University of Texas at Austin)

Wednesday, March 24, 2021 15:30to16:30

Title: Spatial Confounding and Restricted Spatial Regression Methods.

Abstract:ÌýCatherine (Kate) Calder is Professor of Statistics & Data Sciences at the University of Texas at Austin. She joined the UT faculty in 2019 and currently serves as Chair of the Department of Statistics & Data Sciences. Previously, she spent 16 years on the faculty at The Ohio State University, where she was Associate Director (2015–2018) and Co-Director (2018–2019) of the Mathematical Biosciences Institute. She is currently an associate editor for the Annals of Applied Statistics and Bayesian Analysis and has served the profession through various elected roles in the American Statistical Association (ASA) and in the International Society for Bayesian Analysis. Her research has been funded by the NIH, NSF, NASA, and other agencies and foundations. She received the ASA Section on Statistics and the Environment’s 2013 Young Investigator Award and was elected Fellow of the ASA in 2014. Dr. Calder's current research focuses on spatial statistics, Bayesian methods, and network analysis. Her work is motivated by applications in the environmental, social, and health sciences.


Over the last fifteen years, spatial confounding has emerged as a significant source of concern when interpretable inferences on regression coefficients is a primary goal in a spatial regression analysis. Numerous approaches to alleviate spatial confounding have been proposed in the literature, many of which have close connections to dimension reduction techniques used for facilitating faster model fitting. In this presentation, I discuss the issue of spatial confounding in the context of the spatial generalized mixed model for areal data. In particular, I show how many of the techniques for dealing with spatial confounding in this setting can be viewed as a special case of what we refer to as restricted spatial regression (RSR) models. Theoretical characterizations of the posterior distribution of regression coefficients under the RSR model demonstrate that inferences on coefficients can defy general expectations in the literature and can produce inferences on regression coefficients that have counterintuitive relationships with their counterparts in non-spatial and non-RSR models. I will conclude with some general thoughts on restricted spatial regression and alternative approaches for quantifying causal effects in spatial analyses. This talk is based on joint work with Kori Khan, Assistant Professor of Statistics at Iowa State University.

Seminar Epidemiology, Biostatistics, & Occupational Health
Via Zoom:

Ìý

Follow us on

Back to top