Understanding Spatial Regression Models from a Weighting Perspective in an Observational Study of Superfund Remediation
Sophie M. Woodward, Francesca Dominici, Jose R. Zubizarreta

TL;DR
This paper introduces a weighting framework for spatial regression models to better understand and adjust for unmeasured spatial confounding in environmental health studies, demonstrated through an analysis of Superfund site remediation effects.
Contribution
It unifies spatial regression models under a weighting perspective and proposes a new estimator to address multiple forms of unmeasured spatial confounding.
Findings
Remediation has a small beneficial effect on vulnerable newborns.
Spatial error induces approximate covariate balance.
New estimator jointly addresses multiple spatial confoundings.
Abstract
A key challenge in environmental health research is unmeasured spatial confounding, driven by unobserved spatially structured variables that influence both treatment and outcome. A common approach is to fit a spatial regression that models the outcome as a linear function of treatment and covariates, with a spatially structured error term to account for unmeasured spatial confounding. However, it remains unclear to what extent spatial regression actually accounts for such forms of confounding in finite samples, and whether this regression adjustment can be reformulated from a design-based perspective. Motivated by an observational study on the effect of Superfund site remediation on birth outcomes, we present a weighting framework for causal inference that unifies three canonical classes of spatial regression modelsrandom effects, conditional autoregressive, and…
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