A Causal Framework for Evaluating Drivers of Policy Effect Heterogeneity Using Difference-in-Differences
Policymakers and researchers often seek to understand how a policy differentially affects a population and the pathways driving this heterogeneity. For example, when studying an excise tax on sweetened beverages, researchers might assess the roles of cross-border shopping, economic competition, and...
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Zusammenfassung: | Policymakers and researchers often seek to understand how a policy
differentially affects a population and the pathways driving this
heterogeneity. For example, when studying an excise tax on sweetened beverages,
researchers might assess the roles of cross-border shopping, economic
competition, and store-level price changes on beverage sales trends. However,
traditional policy evaluation tools, like the difference-in-differences (DiD)
approach, primarily target average effects of the observed intervention rather
than the underlying drivers of effect heterogeneity. Traditional approaches to
evaluate sources of heterogeneity traditionally lack a causal framework, making
it difficult to determine whether observed outcome differences are truly driven
by the proposed source of heterogeneity or by other confounding factors. In
this paper, we present a framework for evaluating such policy drivers by
representing questions of effect heterogeneity under hypothetical interventions
and apply it to evaluate drivers of the Philadelphia sweetened beverage tax
policy effects. Building on recent advancements in estimating causal effect
curves under DiD designs, we provide tools to assess policy effect
heterogeneity while addressing practical challenges including confounding and
neighborhood dynamics. |
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DOI: | 10.48550/arxiv.2408.16670 |