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Activity Number: 692
Type: Contributed
Date/Time: Thursday, August 4, 2016 : 10:30 AM to 12:20 PM
Sponsor: Section on Statistics and the Environment
Abstract #319683 View Presentation
Title: Dynamically Induced Spatial Confounding
Author(s): Trevor Hefley* and Mevin Hooten and Ephraim M. Hanks and Dan Walsh and Robin Russell
Companies: Colorado State University and Colorado State University and Penn State University and National Wildlife Health Center and National Wildlife Health Center
Keywords: Spatial confounding ; generalized linear mixed model ; diffusion model ; partial differential equation
Abstract:

Spatial patterns can be generated by processes that are dynamic in space and time. Analyzing spatial data often requires modeling dependencies created by a dynamic process. In many applications, the generalized linear mixed model (GLMM) is used with a random effect to account for such dependence. Covariates are often included as fixed effects in a GLMM and may be collinear with the random effects. When using the GLMM, collinearity between covariates and random effects can complicate the implementation and effect inference. We demonstrate the potential for confounding in traditional spatial random effects GLMMs and propose a constructive approach to account for spatial dependence that incorporates scientific knowledge of the spatio-temporal process. Our approach relies on a dynamic spatio-temporal model (e.g., stochastic partial differential equation model) that explicitly incorporates spatial covariates to account for dependence. We illustrate our approach using a spatially varying ecological diffusion model to understand risk factors associated with chronic wasting disease in white-tailed deer from Wisconsin, USA.


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

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