English

TRACE: Transport Alignment Conformal Prediction via Diffusion and Flow Matching Models

Machine Learning 2026-05-11 v1 Machine Learning

Abstract

Constructing valid and informative conformal prediction regions for multi-dimensional outputs remains a fundamental challenge. While conformal prediction provides finite-sample, distribution-free coverage guarantees, its practical performance critically depends on the choice of nonconformity score. Existing approaches often rely on restrictive geometric assumptions or require explicit likelihood evaluation and invertible transformations, limiting their applicability in complex generative settings. In this work, we introduce TRACE (TRansport Alignment Conformal Estimation), a conformal prediction framework that defines nonconformity through transport alignment in diffusion and flow matching models. Rather than evaluating likelihoods, we measure how well a candidate output aligns with the learned generative dynamics by averaging denoising or velocity-matching errors along stochastic transport trajectories. The resulting transport-based scores are scalar-valued and can be calibrated using split conformal prediction, yielding valid marginal coverage under exchangeability. We further analyze the statistical properties of the proposed scores and their sensitivity to computational budget. Experiments on synthetic and real datasets demonstrate valid coverage and show that the resulting regions adapt naturally to multimodal and non-convex conditional distributions.

Keywords

Cite

@article{arxiv.2605.07100,
  title  = {TRACE: Transport Alignment Conformal Prediction via Diffusion and Flow Matching Models},
  author = {Zhenhan Fang and Aixin Tan and Jian Huang},
  journal= {arXiv preprint arXiv:2605.07100},
  year   = {2026}
}

Comments

22 pages, 5 figures and 5 tables

R2 v1 2026-07-01T12:56:39.235Z