Inference under Covariate-Adaptive Randomization with Imperfect Compliance
Federico A. Bugni, Mengsi Gao

TL;DR
This paper develops methods for inference on the Local Average Treatment Effect in covariate-adaptive randomized trials with imperfect compliance, providing asymptotic properties, variance estimation, and strategies to optimize trial design.
Contribution
It introduces a fully saturated IV estimator for LATE under covariate-adaptive randomization with endogenous compliance, and characterizes its asymptotic variance and optimal design strategies.
Findings
The LATE estimator is asymptotically normal.
Consistent standard error estimators are provided.
Strategies to minimize variance are proposed based on pilot data.
Abstract
This paper studies inference in a randomized controlled trial (RCT) with covariate-adaptive randomization (CAR) and imperfect compliance of a binary treatment. In this context, we study inference on the LATE. As in Bugni et al. (2018,2019), CAR refers to randomization schemes that first stratify according to baseline covariates and then assign treatment status so as to achieve "balance" within each stratum. In contrast to these papers, however, we allow participants of the RCT to endogenously decide to comply or not with the assigned treatment status. We study the properties of an estimator of the LATE derived from a "fully saturated" IV linear regression, i.e., a linear regression of the outcome on all indicators for all strata and their interaction with the treatment decision, with the latter instrumented with the treatment assignment. We show that the proposed LATE estimator is…
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Taxonomy
MethodsLinear Regression
