Marginally interpretable spatial logistic regression with bridge processes
Abstract
In including random effects to account for dependent observations, the odds ratio interpretation of logistic regression coefficients is changed from population-averaged to subject-specific. This is unappealing in many applications, motivating a rich literature on methods that maintain the marginal logistic regression structure without random effects, such as generalized estimating equations. However, for spatial data, random effect approaches are appealing in providing a full probabilistic characterization of the data that can be used for prediction. We propose a new class of spatial logistic regression models that maintain both population-averaged and subject-specific interpretations through a novel class of bridge processes for spatial random effects. These processes are shown to have appealing computational and theoretical properties, including a scale mixture of normal representation. The new methodology is illustrated with simulations and an analysis of childhood malaria prevalence data in the Gambia.
Cite
@article{arxiv.2412.04744,
title = {Marginally interpretable spatial logistic regression with bridge processes},
author = {Changwoo J. Lee and David B. Dunson},
journal= {arXiv preprint arXiv:2412.04744},
year = {2025}
}
Comments
Corresponding R package spbridge is available at https://github.com/changwoo-lee/spbridge