Carlos Cinelli - Long Story Short: Omitted Variable Bias in Causal Machine Learning

Date
-
Location
Encina Hall West, room 400
Abstract

We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad class of causal parameters that can be identified as linear functionals of the conditional expectation function of the outcome. Such functionals encompass many of the traditional targets of investigation in causal inference studies, such as, for example, (weighted) average of potential outcomes, average treatment effects (including subgroup effects, such as the effect on the treated), (weighted) average derivatives, and policy effects from shifts in covariate distribution -- all for general, nonparametric causal models. Our construction relies on the Riesz-Frechet representation of the target functional. Specifically, we show how the bound on the bias depends only on the additional variation that the latent variables create both in the outcome and in the Riesz representer for the parameter of interest. Moreover, in many important cases (e.g, average treatment effects and average causal derivatives) the bound is shown to depend on easily interpretable quantities that measure the explanatory power of the omitted variables. Therefore, simple plausibility judgments on the maximum explanatory power of omitted variables (in explaining treatment and outcome variation) are sufficient to place overall bounds on the size of the bias. Furthermore, we use debiased machine learning to provide flexible and efficient statistical inference on learnable components of the bounds. Finally, empirical examples demonstrate the usefulness of the approach.

Biography

Carlos Cinelli is an assistant professor at the Department of Statistics at the University of Washington. He obtained his Ph.D. in Statistics at the University of California, Los Angeles, advised by Chad Hazlett and Judea Pearl.

His research focuses on developing new causal and statistical methods for transparent and robust causal claims in the empirical sciences. He is particularly interested in the inferential challenges faced by social and health scientists, as well as the intersections of causality with machine learning and artificial intelligence.