Towards optimal doubly robust estimation of heterogeneous causal effects
Edward H. Kennedy

TL;DR
This paper advances the theoretical understanding and practical estimation of heterogeneous causal effects by proposing a new doubly robust estimator, analyzing its error bounds, and exploring fundamental limits with minimal assumptions.
Contribution
It introduces a generic error bound for a two-stage doubly robust CATE estimator, derives error rates in nonparametric models, and studies the fundamental limits of CATE estimation with minimal conditions.
Findings
Sharper error bounds than existing literature
Oracle efficiency under weaker conditions
Finite-sample properties demonstrated through simulations
Abstract
Heterogeneous effect estimation plays a crucial role in causal inference, with applications across medicine and social science. Many methods for estimating conditional average treatment effects (CATEs) have been proposed in recent years, but there are important theoretical gaps in understanding if and when such methods are optimal. This is especially true when the CATE has nontrivial structure (e.g., smoothness or sparsity). Our work contributes in several main ways. First, we study a two-stage doubly robust CATE estimator and give a generic model-free error bound, which, despite its generality, yields sharper results than those in the current literature. We apply the bound to derive error rates in nonparametric models with smoothness or sparsity, and give sufficient conditions for oracle efficiency. Underlying our error bound is a general oracle inequality for regression with estimated…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Statistical Methods and Bayesian Inference
