Stable Heterogeneous Treatment Effect Estimation across Out-of-Distribution Populations
Yuling Zhang, Anpeng Wu, Kun Kuang, Liang Du, Zixun Sun, Zhi Wang

TL;DR
This paper introduces a novel framework for stable heterogeneous treatment effect estimation that generalizes well across out-of-distribution populations, addressing a key challenge in real-world applications.
Contribution
The paper proposes the SBRL-HAP framework, combining balancing and independence regularizers with a hierarchical-attention paradigm to improve OOD generalization in HTE estimation.
Findings
Achieves 10% reduction in PEHE error
Reduces ATE bias by 11%
Effective on synthetic and real-world datasets
Abstract
Heterogeneous treatment effect (HTE) estimation is vital for understanding the change of treatment effect across individuals or subgroups. Most existing HTE estimation methods focus on addressing selection bias induced by imbalanced distributions of confounders between treated and control units, but ignore distribution shifts across populations. Thereby, their applicability has been limited to the in-distribution (ID) population, which shares a similar distribution with the training dataset. In real-world applications, where population distributions are subject to continuous changes, there is an urgent need for stable HTE estimation across out-of-distribution (OOD) populations, which, however, remains an open problem. As pioneers in resolving this problem, we propose a novel Stable Balanced Representation Learning with Hierarchical-Attention Paradigm (SBRL-HAP) framework, which consists…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods in Clinical Trials · Statistical Methods and Inference
MethodsFocus
