中文

Geometry Adaptive Counterfactual Distribution Learning with Diffusion-Guided Smoothing

统计方法学 2026-05-26 v1 机器学习 机器学习

摘要

We study counterfactual distribution learning for high-dimensional outcomes whose counterfactual law may concentrate near lower-dimensional structure. Standard isotropic smoothing treats all ambient directions equally, leading to unfavorable scaling and unstable local inference. We propose two diffusion-guided estimators based on semiparametric debiasing: diffusion-informed smoothing for counterfactual densities and diffusion-informed score smoothing for counterfactual scores. The estimators combine causal nuisance adjustment with geometry-adaptive localization driven by diffusion score information, removing first-order nuisance bias while aligning smoothing with local outcome geometry. We establish asymptotic expansions, risk bounds, and inference procedures for smoothed density and score-based targets, with ambient density inference obtained under additional approximation conditions. Under structural geometry conditions, the leading stochastic error is governed by an effective dimension induced by the diffusion-guided kernel, rather than by the ambient dimension. Semi-synthetic experiments based on CelebA show steeper error decay for geometry-adaptive methods, supporting the proposed effective-dimension theory.

关键词

引用

@article{arxiv.2605.25811,
  title  = {Geometry Adaptive Counterfactual Distribution Learning with Diffusion-Guided Smoothing},
  author = {Kwangho Kim},
  journal= {arXiv preprint arXiv:2605.25811},
  year   = {2026}
}