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Main Authors: Guo, Jiayi, Gao, Zijun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.18464
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author Guo, Jiayi
Gao, Zijun
author_facet Guo, Jiayi
Gao, Zijun
contents We study the problem of selecting the best heterogeneous treatment effect (HTE) estimator from a collection of candidates in settings where the treatment effect is fundamentally unobserved. We cast estimator selection as a multiple testing problem and introduce a ground-truth-free procedure based on a cross-fitted, exponentially weighted test statistic. A key component of our method is a two-way sample splitting scheme that decouples nuisance estimation from weight learning and ensures the stability required for valid inference. Leveraging a stability-based central limit theorem, we establish asymptotic familywise error rate control under mild regularity conditions. Empirically, our procedure provides reliable error control while substantially reducing false selections compared with commonly used methods across ACIC 2016, IHDP, and Twins benchmarks, demonstrating that our method is feasible and powerful even without ground-truth treatment effects.
format Preprint
id arxiv_https___arxiv_org_abs_2511_18464
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reliable Selection of Heterogeneous Treatment Effect Estimators
Guo, Jiayi
Gao, Zijun
Machine Learning
We study the problem of selecting the best heterogeneous treatment effect (HTE) estimator from a collection of candidates in settings where the treatment effect is fundamentally unobserved. We cast estimator selection as a multiple testing problem and introduce a ground-truth-free procedure based on a cross-fitted, exponentially weighted test statistic. A key component of our method is a two-way sample splitting scheme that decouples nuisance estimation from weight learning and ensures the stability required for valid inference. Leveraging a stability-based central limit theorem, we establish asymptotic familywise error rate control under mild regularity conditions. Empirically, our procedure provides reliable error control while substantially reducing false selections compared with commonly used methods across ACIC 2016, IHDP, and Twins benchmarks, demonstrating that our method is feasible and powerful even without ground-truth treatment effects.
title Reliable Selection of Heterogeneous Treatment Effect Estimators
topic Machine Learning
url https://arxiv.org/abs/2511.18464