Rejective Sampling, Rerandomization and Regression Adjustment in Survey Experiments
Zihao Yang, Tianyi Qu, Xinran Li

TL;DR
This paper introduces a two-stage rerandomization method for survey experiments to improve covariate balance at both sampling and treatment stages, enhancing the accuracy and precision of causal effect estimates.
Contribution
It develops a novel two-stage rerandomization design and asymptotic theory, generalizing existing methods to improve covariate balance and estimator precision in survey experiments.
Findings
Rerandomization improves covariate balance.
Enhanced estimators lead to shorter confidence intervals.
Covariate adjustment further improves precision.
Abstract
Classical randomized experiments, equipped with randomization-based inference, provide assumption-free inference for treatment effects. They have been the gold standard for drawing causal inference and provide excellent internal validity. However, they have also been criticized for questionable external validity, in the sense that the conclusion may not generalize well to a larger population. The randomized survey experiment is a design tool that can help mitigate this concern, by randomly selecting the experimental units from the target population of interest. However, as pointed out by Morgan and Rubin (2012), chance imbalances often exist in covariate distributions between different treatment groups even under completely randomized experiments. Not surprisingly, such covariate imbalances also occur in randomized survey experiments. Furthermore, the covariate imbalances happen not…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Bayesian Inference · Statistical Methods and Inference
