Multiply robust estimation of causal quantile treatment effects

Stat Med. 2020 Dec 10;39(28):4238-4251. doi: 10.1002/sim.8722. Epub 2020 Aug 28.

Abstract

In causal inference, often the interest lies in the estimation of the average causal effect. Other quantities such as the quantile treatment effect may be of interest as well. In this article, we propose a multiply robust method for estimating the marginal quantiles of potential outcomes by achieving mean balance in (a) the propensity score, and (b) the conditional distributions of potential outcomes. An empirical likelihood or entropy measure approach can be utilized for estimation instead of inverse probability weighting, which is known to be sensitive to the misspecification of the propensity score model. Simulation studies are conducted across different scenarios of correctness in both the propensity score models and the outcome models. Both simulation results and theoretical development indicate that our proposed estimator is consistent if any of the models are correctly specified. In the data analysis, we investigate the quantile treatment effect of mothers' smoking status on infants' birthweight.

Keywords: causal inference; covariate balancing; empirical likelihood; multiple robustness; quantile treatment effect.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Causality
  • Computer Simulation
  • Humans
  • Models, Statistical*
  • Propensity Score
  • Research Design*