Meta-Learning for Heterogeneous Treatment Effect Estimation with Closed-Form Solvers
Abstract
This article proposes a meta-learning method for estimating the conditional average treatment effect (CATE) from a few observational data. The proposed method learns how to estimate CATEs from multiple tasks and uses the knowledge for unseen tasks. In the proposed method, based on the meta-learner framework, we decompose the CATE estimation problem into sub-problems. For each sub-problem, we formulate our estimation models using neural networks with task-shared and task-specific parameters. With our formulation, we can obtain optimal task-specific parameters in a closed form that are differentiable with respect to task-shared parameters, making it possible to perform effective meta-learning. The task-shared parameters are trained such that the expected CATE estimation performance in few-shot settings is improved by minimizing the difference between a CATE estimated with a large amount of data and one estimated with just a few data. Our experimental results demonstrate that our method outperforms the existing meta-learning approaches and CATE estimation methods.
Cite
Text
Iwata and Chikahara. "Meta-Learning for Heterogeneous Treatment Effect Estimation with Closed-Form Solvers." Machine Learning, 2024. doi:10.1007/S10994-024-06546-7Markdown
[Iwata and Chikahara. "Meta-Learning for Heterogeneous Treatment Effect Estimation with Closed-Form Solvers." Machine Learning, 2024.](https://mlanthology.org/mlj/2024/iwata2024mlj-metalearning/) doi:10.1007/S10994-024-06546-7BibTeX
@article{iwata2024mlj-metalearning,
title = {{Meta-Learning for Heterogeneous Treatment Effect Estimation with Closed-Form Solvers}},
author = {Iwata, Tomoharu and Chikahara, Yoichi},
journal = {Machine Learning},
year = {2024},
pages = {6093-6114},
doi = {10.1007/S10994-024-06546-7},
volume = {113},
url = {https://mlanthology.org/mlj/2024/iwata2024mlj-metalearning/}
}