Treatment Effect Estimation using Invariant Risk Minimization
Abstract
Inferring causal individual treatment effect (ITE) from observational data is a challenging problem whose difficulty is exacerbated by the presence of treatment assignment bias. In this work, we propose a new way to estimate the ITE using the domain generalization framework of invariant risk minimization (IRM). IRM uses data from multiple domains, learns predictors that do not exploit spurious domain-dependent factors, and generalizes better to unseen domains. We propose an IRM-based ITE estimator aimed at tackling treatment assignment bias when there is little support overlap between the control group and the treatment group. We accomplish this by creating diversity: given a single dataset, we split the data into multiple domains artificially. These diverse domains are then exploited by IRM to more effectively generalize regression-based models to data regions that lack support overlap. We show gains over classical regression approaches to ITE estimation in settings when support mismatch is more pronounced.
Cite
@article{arxiv.2103.07788,
title = {Treatment Effect Estimation using Invariant Risk Minimization},
author = {Abhin Shah and Kartik Ahuja and Karthikeyan Shanmugam and Dennis Wei and Kush Varshney and Amit Dhurandhar},
journal= {arXiv preprint arXiv:2103.07788},
year = {2021}
}