Causal Inference on Networks under Misspecified Exposure Mappings: A Partial Identification Framework
Maresa Schr\"oder, Miruna Oprescu, Stefan Feuerriegel, Nathan Kallus

TL;DR
This paper introduces a partial identification framework for causal inference on networks that accounts for potential misspecification of exposure mappings, providing robust bounds on treatment effects.
Contribution
It develops a novel sensitivity analysis approach that derives sharp bounds on effects under exposure mapping misspecification, with efficient estimators and practical applications.
Findings
Bounds remain informative under misspecification.
Orthogonal estimators are valid, sharp, and efficient.
Framework applies to common exposure settings.
Abstract
Estimating treatment effects in networks is challenging, as each potential outcome depends on the treatments of all other nodes in the network. To overcome this difficulty, existing methods typically impose an exposure mapping that compresses the treatment assignments in the network into a low-dimensional summary. However, if this mapping is misspecified, standard estimators for direct and spillover effects can be severely biased. We propose a novel partial identification framework for causal inference on networks to assess the robustness of treatment effects under misspecifications of the exposure mapping. Specifically, we derive sharp upper and lower bounds on direct and spillover effects under such misspecifications. As such, our framework presents a novel application of causal sensitivity analysis to exposure mappings. We instantiate our framework for three canonical exposure…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Bayesian Modeling and Causal Inference · Mental Health Research Topics
