Inference on Local Variable Importance Measures for Heterogeneous Treatment Effects
Date: Wed, Jan 28, 2026
Location: Online, Zoom
Conference: Emergent Research: The PIMS Postdoctoral Fellow Seminar
Subject: Mathematics
Class: Scientific
Abstract:
We provide an inferential framework to assess variable importance for heterogeneous treatment effects. This assessment is especially useful in high-risk domains such as medicine, where decision makers hesitate to rely on black-box treatment recommendation algorithms. The variable importance measures we consider are local in that they may differ across individuals, while the inference is global in that it tests whether a given variable is important for any individual. Our approach builds on recent developments in semiparametric theory for function-valued parameters, and is valid even when statistical machine learning algorithms are employed to quantify treatment effect heterogeneity. We demonstrate the applicability of our method to infectious disease prevention strategies.


