MMODELYST
Papers/RepFlow: Representation Enhanced Flow Matching for Causal Effect Estimation
PAP

RepFlow: Representation Enhanced Flow Matching for Causal Effect Estimation

May 7, 2026

arXiv
Abstract

Estimating causal effects from observational data has become increasingly critical in diverse fields including healthcare, economics, and social policy. The fundamental challenge in causal inference arises from the missing counterfactuals and the selection bias. Existing methods are largely limited to point estimates and lack the capacity for distribution modeling. In this work, we propose RepFlow, a novel framework that formulates causal effect estimation as a joint optimization problem integrating representation learning with Conditional Flow Matching (CFM). RepFlow mitigates selection bias by minimizing the entropically regularized Wasserstein distance between treated and control representations. To enhance numerical stability, we further introduce an $L_2$ normalization constraint on latent representations. This balanced representation enables the flow model to accurately capture the distribution of potential outcomes. Extensive experiments across a wide range of benchmarks demonstrate that RepFlow consistently outperforms existing methods in both point and distributional causal effect estimation.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Yifei Xie, Jian Huang
Your notes (browser-local)
saved
arXiv:2605.05890