English

Long-term Causal Inference Under Persistent Confounding via Data Combination

Methodology 2024-09-04 v5 Econometrics Machine Learning

Abstract

We study the identification and estimation of long-term treatment effects when both experimental and observational data are available. Since the long-term outcome is observed only after a long delay, it is not measured in the experimental data, but only recorded in the observational data. However, both types of data include observations of some short-term outcomes. In this paper, we uniquely tackle the challenge of persistent unmeasured confounders, i.e., some unmeasured confounders that can simultaneously affect the treatment, short-term outcomes and the long-term outcome, noting that they invalidate identification strategies in previous literature. To address this challenge, we exploit the sequential structure of multiple short-term outcomes, and develop three novel identification strategies for the average long-term treatment effect. We further propose three corresponding estimators and prove their asymptotic consistency and asymptotic normality. We finally apply our methods to estimate the effect of a job training program on long-term employment using semi-synthetic data. We numerically show that our proposals outperform existing methods that fail to handle persistent confounders.

Keywords

Cite

@article{arxiv.2202.07234,
  title  = {Long-term Causal Inference Under Persistent Confounding via Data Combination},
  author = {Guido Imbens and Nathan Kallus and Xiaojie Mao and Yuhao Wang},
  journal= {arXiv preprint arXiv:2202.07234},
  year   = {2024}
}
R2 v1 2026-06-24T09:37:16.284Z