Variance Estimation for Weighted Average Treatment Effects
Huiyue Li, Yi Liu, Yunji Zhou, Jiajun Liu, Dezhao Fu, and Roland A. Matsouaka

TL;DR
This paper introduces a new bootstrap method for estimating variance in weighted average treatment effects that improves computational efficiency and avoids positivity violations, with extensive simulations and real data applications.
Contribution
It proposes a post-weighting bootstrap approach for WATEs, generalizes wild bootstrap to broader estimands, and provides practical recommendations based on simulations and NHANES data.
Findings
The new bootstrap method reduces computational cost.
It avoids random positivity violations in replicates.
It performs well across various simulation scenarios.
Abstract
Common variance estimation methods for weighted average treatment effects (WATEs) in observational studies include nonparametric bootstrap and model-based, closed-form sandwich variance estimation. However, the computational cost of bootstrap increases with the size of the data at hand. Besides, some replicates may exhibit random violations of the positivity assumption even when the original data do not. Sandwich variance estimation relies on regularity conditions that may be structurally violated. Moreover, the sandwich variance estimation is model-dependent on the propensity score model, the outcome model, or both; thus it does not have a unified closed-form expression. Recent studies have explored the use of wild bootstrap to estimate the variance of the average treatment effect on the treated (ATT). This technique adopts a one-dimensional, nonparametric, and computationally…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
