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Causal Clustering for Conditional Average Treatment Effects Estimation and Subgroup Discovery

Published: September 6, 2025 | arXiv ID: 2509.05775v2

By: Zilong Wang, Turgay Ayer, Shihao Yang

Potential Business Impact:

Finds groups that benefit most from treatments.

Business Areas:
A/B Testing Data and Analytics

Estimating heterogeneous treatment effects is critical in domains such as personalized medicine, resource allocation, and policy evaluation. A central challenge lies in identifying subpopulations that respond differently to interventions, thereby enabling more targeted and effective decision-making. While clustering methods are well-studied in unsupervised learning, their integration with causal inference remains limited. We propose a novel framework that clusters individuals based on estimated treatment effects using a learned kernel derived from causal forests, revealing latent subgroup structures. Our approach consists of two main steps. First, we estimate debiased Conditional Average Treatment Effects (CATEs) using orthogonalized learners via the Robinson decomposition, yielding a kernel matrix that encodes sample-level similarities in treatment responsiveness. Second, we apply kernelized clustering to this matrix to uncover distinct, treatment-sensitive subpopulations and compute cluster-level average CATEs. We present this kernelized clustering step as a form of regularization within the residual-on-residual regression framework. Through extensive experiments on semi-synthetic and real-world datasets, supported by ablation studies and exploratory analyses, we demonstrate the effectiveness of our method in capturing meaningful treatment effect heterogeneity.

Country of Origin
🇺🇸 United States

Page Count
11 pages

Category
Statistics:
Machine Learning (Stat)