Divide-and-Conquer Posterior Sampling for Denoising Diffusion Priors
Abstract
Recent advancements in solving Bayesian inverse problems have spotlighted denoising diffusion models (DDMs) as effective priors.Although these have great potential, DDM priors yield complex posterior distributions that are challenging to sample from.Existing approaches to posterior sampling in this context address this problem either by retraining model-specific components, leading to stiff and cumbersome methods, or by introducing approximations with uncontrolled errors that affect the accuracy of the produced samples.We present an innovative framework, divide-and-conquer posterior sampling, which leverages the inherent structure of DDMs to construct a sequence of intermediate posteriors that guide the produced samples to the target posterior.Our method significantly reduces the approximation error associated with current techniques without the need for retraining.We demonstrate the versatility and effectiveness of our approach for a wide range of Bayesian inverse problems.The code is available at \url{https://github.com/Badr-MOUFAD/dcps}
Cite
Text
Janati et al. "Divide-and-Conquer Posterior Sampling for Denoising Diffusion Priors." Neural Information Processing Systems, 2024. doi:10.52202/079017-3090Markdown
[Janati et al. "Divide-and-Conquer Posterior Sampling for Denoising Diffusion Priors." Neural Information Processing Systems, 2024.](https://mlanthology.org/neurips/2024/janati2024neurips-divideandconquer/) doi:10.52202/079017-3090BibTeX
@inproceedings{janati2024neurips-divideandconquer,
title = {{Divide-and-Conquer Posterior Sampling for Denoising Diffusion Priors}},
author = {Janati, Yazid and Moufad, Badr and Durmus, Alain and Moulines, Eric and Olsson, Jimmy},
booktitle = {Neural Information Processing Systems},
year = {2024},
doi = {10.52202/079017-3090},
url = {https://mlanthology.org/neurips/2024/janati2024neurips-divideandconquer/}
}