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Longitudinal Targeted Minimum Loss-based Estimation with Temporal-Difference Heterogeneous Transformer

Machine Learning 2025-06-09 v2 Artificial Intelligence Machine Learning Applications Methodology

Abstract

We propose Deep Longitudinal Targeted Minimum Loss-based Estimation (Deep LTMLE), a novel approach to estimate the counterfactual mean of outcome under dynamic treatment policies in longitudinal problem settings. Our approach utilizes a transformer architecture with heterogeneous type embedding trained using temporal-difference learning. After obtaining an initial estimate using the transformer, following the targeted minimum loss-based likelihood estimation (TMLE) framework, we statistically corrected for the bias commonly associated with machine learning algorithms. Furthermore, our method also facilitates statistical inference by enabling the provision of 95% confidence intervals grounded in asymptotic statistical theory. Simulation results demonstrate our method's superior performance over existing approaches, particularly in complex, long time-horizon scenarios. It remains effective in small-sample, short-duration contexts, matching the performance of asymptotically efficient estimators. To demonstrate our method in practice, we applied our method to estimate counterfactual mean outcomes for standard versus intensive blood pressure management strategies in a real-world cardiovascular epidemiology cohort study.

Keywords

Cite

@article{arxiv.2404.04399,
  title  = {Longitudinal Targeted Minimum Loss-based Estimation with Temporal-Difference Heterogeneous Transformer},
  author = {Toru Shirakawa and Yi Li and Yulun Wu and Sky Qiu and Yuxuan Li and Mingduo Zhao and Hiroyasu Iso and Mark van der Laan},
  journal= {arXiv preprint arXiv:2404.04399},
  year   = {2025}
}

Comments

Published in ICML 2024, PMLR 235

R2 v1 2026-06-28T15:45:36.255Z