AI RESEARCH
Geometry Adaptive Counterfactual Distribution Learning with Diffusion-Guided Smoothing
arXiv CS.LG
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ArXi:2605.25811v1 Announce Type: cross 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.