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Improved inference for doubly robust estimators of heterogeneous treatment effects

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  • Heejun Shin
  • Joseph Antonelli

Abstract

We propose a doubly robust approach to characterizing treatment effect heterogeneity in observational studies. We develop a frequentist inferential procedure that utilizes posterior distributions for both the propensity score and outcome regression models to provide valid inference on the conditional average treatment effect even when high‐dimensional or nonparametric models are used. We show that our approach leads to conservative inference in finite samples or under model misspecification and provides a consistent variance estimator when both models are correctly specified. In simulations, we illustrate the utility of these results in difficult settings such as high‐dimensional covariate spaces or highly flexible models for the propensity score and outcome regression. Lastly, we analyze environmental exposure data from NHANES to identify how the effects of these exposures vary by subject‐level characteristics.

Suggested Citation

  • Heejun Shin & Joseph Antonelli, 2023. "Improved inference for doubly robust estimators of heterogeneous treatment effects," Biometrics, The International Biometric Society, vol. 79(4), pages 3140-3152, December.
  • Handle: RePEc:bla:biomet:v:79:y:2023:i:4:p:3140-3152
    DOI: 10.1111/biom.13837
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    References listed on IDEAS

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