Reconciling design-based and model-based causal inferences for split-plot experiments
Anqi Zhao, Peng Ding

TL;DR
This paper bridges the gap between design-based and model-based causal inference methods in split-plot experiments, proposing regression strategies that are valid and efficient under complex experimental designs.
Contribution
It extends the theoretical foundation for combining design-based and model-based approaches, introducing regression methods that are asymptotically valid and more flexible with covariates.
Findings
Regression strategies replicate Hajek and HTF estimators from least squares.
Cluster-robust covariances are asymptotically conservative for true covariances.
Covariate adjustment improves efficiency in split-plot causal inference.
Abstract
The split-plot design assigns different interventions at the whole-plot and sub-plot levels, respectively, and induces a group structure on the final treatment assignments. A common strategy is to use the OLS fit of the outcome on the treatment indicators coupled with the robust standard errors clustered at the whole-plot level. It does not give consistent estimator for the causal effects of interest when the whole-plot sizes vary. Another common strategy is to fit the linear mixed-effects model of the outcome with Normal random effects and errors. It is a purely model-based approach and can be sensitive to violations of parametric assumptions. In contrast, the design-based inference assumes no outcome models and relies solely on the controllable randomization mechanism determined by the physical experiment. We first extend the existing design-based inference based on the {\htf}…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Bayesian Inference · Statistical Methods in Clinical Trials
