Calibrated Test-Time Guidance for Bayesian Inference
Machine Learning
2026-02-27 v1 Artificial Intelligence
Abstract
Test-time guidance is a widely used mechanism for steering pretrained diffusion models toward outcomes specified by a reward function. Existing approaches, however, focus on maximizing reward rather than sampling from the true Bayesian posterior, leading to miscalibrated inference. In this work, we show that common test-time guidance methods do not recover the correct posterior distribution and identify the structural approximations responsible for this failure. We then propose consistent alternative estimators that enable calibrated sampling from the Bayesian posterior. We significantly outperform previous methods on a set of Bayesian inference tasks, and match state-of-the-art in black hole image reconstruction.
Cite
@article{arxiv.2602.22428,
title = {Calibrated Test-Time Guidance for Bayesian Inference},
author = {Daniel Geyfman and Felix Draxler and Jan Groeneveld and Hyunsoo Lee and Theofanis Karaletsos and Stephan Mandt},
journal= {arXiv preprint arXiv:2602.22428},
year = {2026}
}
Comments
Preprint. Under review