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Conditioning diffusion models by explicit forward-backward bridging

Authors :
Corenflos, Adrien
Zhao, Zheng
Särkkä, Simo
Sjölund, Jens
Schön, Thomas B.
Publication Year :
2024

Abstract

Given an unconditional diffusion model $\pi(x, y)$, using it to perform conditional simulation $\pi(x \mid y)$ is still largely an open question and is typically achieved by learning conditional drifts to the denoising SDE after the fact. In this work, we express conditional simulation as an inference problem on an augmented space corresponding to a partial SDE bridge. This perspective allows us to implement efficient and principled particle Gibbs and pseudo-marginal samplers marginally targeting the conditional distribution $\pi(x \mid y)$. Contrary to existing methodology, our methods do not introduce any additional approximation to the unconditional diffusion model aside from the Monte Carlo error. We showcase the benefits and drawbacks of our approach on a series of synthetic and real data examples.<br />Comment: 24 pages, 12 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.13794
Document Type :
Working Paper