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Teaser image to Distilling Heterogeneous Treatment Effects: Stable Subgroup Estimation in Causal Inference

AI Keynote Series

Distilling Heterogeneous Treatment Effects: Stable Subgroup Estimation in Causal Inference

Melody Huang, Political Science and Statistics & Data Science, Yale University

   20.11.2025

   4:00 pm - 5:30 pm

   Online via Zoom

Recent methodological developments have introduced new black-box approaches to better estimate heterogeneous treatment effects; however, these methods fall short of providing interpretable characterizations of the underlying individuals who may be most at risk or benefit most from receiving the treatment, thereby limiting their practical utility.

In this work, we introduce a novel method, causal distillation trees (CDT), to estimate interpretable subgroups. CDT allows researchers to fit any machine learning model of their choice to estimate the individual-level treatment effect, and then leverages a simple, second-stage tree-based model to 'distill' the estimated treatment effect into meaningful subgroups. As a result, CDT inherits the improvements in predictive performance from black-box machine learning models while preserving the interpretability of a simple decision tree.

We derive theoretical guarantees for the consistency of the estimated subgroups using CDT, and introduce stability-driven diagnostics for researchers to evaluate the quality of the estimated subgroups. We illustrate our proposed method on a randomized controlled trial of antiretroviral treatment for HIV from the AIDS Clinical Trials Group Study 175 and show that CDT out-performs state-of-the-art approaches in constructing stable, clinically relevant subgroups.

This is co-authored work with Tiffany Tang and Ana Kenney.

Organized by:

Institute of AI in Management
LMU Munich


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