Feasible Dose-Response Curves for Continuous Treatments Under Positivity Violations
Han Bao, Michael Schomaker

TL;DR
This paper develops a method to estimate feasible dose-response curves for continuous treatments when positivity assumptions are violated, ensuring results are scientifically interpretable and practically relevant.
Contribution
It introduces a diagnostic and a feasible dose-response estimator that account for limited support, improving causal inference under positivity violations.
Findings
Reduced bias in estimates under positivity violations
Recovery of standard dose-response curves with adequate support
Application demonstrates stable, interpretable results in clinical trial data
Abstract
Positivity violations can complicate estimation and interpretation of causal dose-response curves (CDRCs) for continuous interventions. Weighting-based methods are designed to handle limited overlap, but the resulting weighted targets can be hard to interpret scientifically. Modified treatment policies can be less sensitive to support limitations, yet they typically target policy-defined effects that may not align with the original dose-response question. We develop an approach that addresses limited overlap while remaining close to the scientific target of the CDRC. Our work is motivated by the CHAPAS-3 trial of HIV-positive children in Zambia and Uganda, where clinically relevant efavirenz concentration levels are not uniformly supported across covariate strata. We introduce a diagnostic, the non-overlap ratio, which quantifies, as a function of the target intervention level, the…
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Taxonomy
TopicsAdvanced Causal Inference Techniques
