Learning Heterogeneity in Causal Inference Using Sufficient Dimension Reduction

Often the research interest in causal inference is on the regression causal effect, which is the mean difference in the potential outcomes conditional on the covariates. In this paper, we use sufficient dimension reduction to estimate a lower dimensional linear combination of the covariates that is...

Full description

Bibliographic Details
Main Authors: Luo Wei, Wu Wenbo, Zhu Yeying
Format: Article
Language:English
Published: De Gruyter 2019-04-01
Series:Journal of Causal Inference
Subjects:
Online Access:https://doi.org/10.1515/jci-2018-0015
Description
Summary:Often the research interest in causal inference is on the regression causal effect, which is the mean difference in the potential outcomes conditional on the covariates. In this paper, we use sufficient dimension reduction to estimate a lower dimensional linear combination of the covariates that is sufficient to model the regression causal effect. Compared with the existing applications of sufficient dimension reduction in causal inference, our approaches are more efficient in reducing the dimensionality of covariates, and avoid estimating the individual outcome regressions. The proposed approaches can be used in three ways to assist modeling the regression causal effect: to conduct variable selection, to improve the estimation accuracy, and to detect the heterogeneity. Their usefulness are illustrated by both simulation studies and a real data example.
ISSN:2193-3677
2193-3685