English

Deconfounding Scores and Representation Learning for Causal Effect Estimation with Weak Overlap

Machine Learning 2026-04-02 v1 Machine Learning Methodology

Abstract

Overlap, also known as positivity, is a key condition for causal treatment effect estimation. Many popular estimators suffer from high variance and become brittle when features differ strongly across treatment groups. This is especially challenging in high dimensions: the curse of dimensionality can make overlap implausible. To address this, we propose a class of feature representations called deconfounding scores, which preserve both identification and the target of estimation; the classical propensity and prognostic scores are two special cases. We characterize the problem of finding a representation with better overlap as minimizing an overlap divergence under a deconfounding score constraint. We then derive closed-form expressions for a class of deconfounding scores under a broad family of generalized linear models with Gaussian features and show that prognostic scores are overlap-optimal within this class. We conduct extensive experiments to assess this behavior empirically.

Keywords

Cite

@article{arxiv.2604.00811,
  title  = {Deconfounding Scores and Representation Learning for Causal Effect Estimation with Weak Overlap},
  author = {Oscar Clivio and Alexander D'Amour and Alexander Franks and David Bruns-Smith and Chris Holmes and Avi Feller},
  journal= {arXiv preprint arXiv:2604.00811},
  year   = {2026}
}

Comments

To appear at AISTATS 2026

R2 v1 2026-07-01T11:48:07.554Z