Causal Effect Inference for Structured Treatments
Machine Learning
2021-10-29 v3 Machine Learning
Abstract
We address the estimation of conditional average treatment effects (CATEs) for structured treatments (e.g., graphs, images, texts). Given a weak condition on the effect, we propose the generalized Robinson decomposition, which (i) isolates the causal estimand (reducing regularization bias), (ii) allows one to plug in arbitrary models for learning, and (iii) possesses a quasi-oracle convergence guarantee under mild assumptions. In experiments with small-world and molecular graphs we demonstrate that our approach outperforms prior work in CATE estimation.
Keywords
Cite
@article{arxiv.2106.01939,
title = {Causal Effect Inference for Structured Treatments},
author = {Jean Kaddour and Yuchen Zhu and Qi Liu and Matt J. Kusner and Ricardo Silva},
journal= {arXiv preprint arXiv:2106.01939},
year = {2021}
}
Comments
NeurIPS 2021 Camera-Ready submission