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Main Authors: Zhang, Jinlun, Huang, Haoneng, Zhan, Zishu, Ou, Chunquan
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.01765
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author Zhang, Jinlun
Huang, Haoneng
Zhan, Zishu
Ou, Chunquan
author_facet Zhang, Jinlun
Huang, Haoneng
Zhan, Zishu
Ou, Chunquan
contents Mediation analysis has traditionally focused on outcome-level summary contrasts, such as mean effects, which may obscure substantial distributional changes induced by complex and nonlinear causal mechanisms. We propose Distributional Causal Mediation Analysis (DCMA), a generative learning framework for identifying and estimating treatment effects on entire outcome distributions transmitted through multiple mediators. DCMA learns conditional generative models for the mediators and the outcome, recovering the relevant conditional distributions from observational data. Leveraging the identification formulas, it reconstructs interventional outcome distributions via Monte Carlo forward simulation by noise resampling, enabling the capture of both classical summary effects and rich distributional contrasts such as energy distance and the Wasserstein distance. Analytical error bounds are derived to decompose how estimation errors in the learned conditional models propagate to the reconstructed interventional outcome distributions. The empirical effectiveness of DCMA is demonstrated through numerical experiments and real-world data applications.
format Preprint
id arxiv_https___arxiv_org_abs_2605_01765
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Distributional Causal Mediation via Conditional Generative Modeling
Zhang, Jinlun
Huang, Haoneng
Zhan, Zishu
Ou, Chunquan
Machine Learning
Mediation analysis has traditionally focused on outcome-level summary contrasts, such as mean effects, which may obscure substantial distributional changes induced by complex and nonlinear causal mechanisms. We propose Distributional Causal Mediation Analysis (DCMA), a generative learning framework for identifying and estimating treatment effects on entire outcome distributions transmitted through multiple mediators. DCMA learns conditional generative models for the mediators and the outcome, recovering the relevant conditional distributions from observational data. Leveraging the identification formulas, it reconstructs interventional outcome distributions via Monte Carlo forward simulation by noise resampling, enabling the capture of both classical summary effects and rich distributional contrasts such as energy distance and the Wasserstein distance. Analytical error bounds are derived to decompose how estimation errors in the learned conditional models propagate to the reconstructed interventional outcome distributions. The empirical effectiveness of DCMA is demonstrated through numerical experiments and real-world data applications.
title Distributional Causal Mediation via Conditional Generative Modeling
topic Machine Learning
url https://arxiv.org/abs/2605.01765