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Model-Agnostic Meta-Learners for Estimating Heterogeneous Treatment Effects Over Time

MCML Authors

Abstract

Estimating heterogeneous treatment effects (HTEs) over time is crucial in many disciplines such as personalized medicine. For example, electronic health records are commonly collected over several time periods and then used to personalize treatment decisions. Existing works for this task have mostly focused on model-based learners (i.e., learners that adapt specific machine-learning models). In contrast, model-agnostic learners -- so-called meta-learners -- are largely unexplored. In our paper, we propose several meta-learners that are model-agnostic and thus can be used in combination with arbitrary machine learning models (e.g., transformers) to estimate HTEs over time. Here, our focus is on learners that can be obtained via weighted pseudo-outcome regressions, which allows for efficient estimation by targeting the treatment effect directly. We then provide a comprehensive theoretical analysis that characterizes the different learners and that allows us to offer insights into when specific learners are preferable. Finally, we confirm our theoretical insights through numerical experiments. In sum, while meta-learners are already state-of-the-art for the static setting, we are the first to propose a comprehensive set of meta-learners for estimating HTEs in the time-varying setting.

inproceedings


ICLR 2025

13th International Conference on Learning Representations. Singapore, Apr 24-28, 2025.
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A* Conference

Authors

D. FrauenK. HeßS. Feuerriegel

Links

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Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: FHF25

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