Bayesian Nonparametrics for Principal Stratification with Continuous Post-Treatment Variables
Dafne Zorzetto, Antonio Canale, Fabrizia Mealli, Francesca Dominici, Falco J. Bargagli-Stoffi

TL;DR
This paper introduces CASBAH, a Bayesian nonparametric method for principal stratification with continuous post-treatment variables, enabling better identification and uncertainty quantification of causal effects.
Contribution
The paper presents CASBAH, a novel hierarchical Bayesian nonparametric approach that overcomes limitations of existing methods for continuous post-treatment variables in principal stratification.
Findings
CASBAH outperforms existing methods in simulations.
It effectively identifies coarsened principal strata.
Applied to air quality data, it estimates causal effects accurately.
Abstract
Principal stratification provides a causal inference framework for investigating treatment effects in the presence of a post-treatment variable. Principal strata play a key role in characterizing the treatment effect by identifying groups of units with the same or similar values for the potential post-treatment variable at all treatment levels. The literature has focused mainly on binary post-treatment variables. Few papers considered continuous post-treatment variables. In the presence of a continuous post-treatment, a challenge is how to identify and characterize meaningful coarsening of the latent principal strata that lead to interpretable principal causal effects. This paper introduces the Confounders-Aware SHared atoms BAyesian mixture (CASBAH), a novel approach for principal stratification with binary treatment and continuous post-treatment variables. CASBAH leverages Bayesian…
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Taxonomy
TopicsStatistical Methods and Inference
