Efficient Covariate Balancing for the Local Average Treatment Effect
Phillip Heiler

TL;DR
This paper introduces an empirical balancing method for estimating treatment effects with noncompliance, achieving low bias and variance without functional form assumptions, and applicable in high-dimensional settings.
Contribution
It develops a novel covariate balancing approach for instrumental variable analysis that improves finite sample properties and can incorporate regularization for high-dimensional data.
Findings
Exact finite sample balance across instrument groups
Reduced bias and variance compared to inverse probability weighting
Effective in high-dimensional confounding scenarios
Abstract
This paper develops an empirical balancing approach for the estimation of treatment effects under two-sided noncompliance using a binary conditionally independent instrumental variable. The method weighs both treatment and outcome information with inverse probabilities to produce exact finite sample balance across instrument level groups. It is free of functional form assumptions on the outcome or the treatment selection step. By tailoring the loss function for the instrument propensity scores, the resulting treatment effect estimates exhibit both low bias and a reduced variance in finite samples compared to conventional inverse probability weighting methods. The estimator is automatically weight normalized and has similar bias properties compared to conventional two-stage least squares estimation under constant causal effects for the compliers. We provide conditions for asymptotic…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
