Proximal nested sampling with data-driven priors for physical scientists
Proximal nested sampling with data-driven priors for physical scientists
Proximal nested sampling was introduced recently to open up Bayesian model selection for high-dimensional problems such as computational imaging. The framework is suitable for models with a log-convex likelihood, which are ubiquitous in the imaging sciences. The purpose of this article is two-fold. First, we review proximal nested sampling in a pedagogical manner in an attempt to elucidate the framework for physical scientists. Second, we show how proximal nested sampling can be extended in an empirical Bayes setting to support data-driven priors, such as deep neural networks learned from training data.
McEwen, Jason D.
64c6269a-fe40-41d7-8b0c-d3c9ad920175
Liaudat, Tobías I.
73b7c083-b7e8-411a-b5e9-e9fd68753339
Price, Matthew A.
4b9aaa38-54ba-436f-88da-bcf25c6375ea
Cai, Xiaohao
de483445-45e9-4b21-a4e8-b0427fc72cee
Pereyra, Marcelo
7ae249d9-94ea-4f67-a3ec-e2907665952e
1 December 2023
McEwen, Jason D.
64c6269a-fe40-41d7-8b0c-d3c9ad920175
Liaudat, Tobías I.
73b7c083-b7e8-411a-b5e9-e9fd68753339
Price, Matthew A.
4b9aaa38-54ba-436f-88da-bcf25c6375ea
Cai, Xiaohao
de483445-45e9-4b21-a4e8-b0427fc72cee
Pereyra, Marcelo
7ae249d9-94ea-4f67-a3ec-e2907665952e
McEwen, Jason D., Liaudat, Tobías I., Price, Matthew A., Cai, Xiaohao and Pereyra, Marcelo
(2023)
Proximal nested sampling with data-driven priors for physical scientists.
Physical Sciences Forum, 9 (1).
(doi:10.3390/psf2023009013).
Abstract
Proximal nested sampling was introduced recently to open up Bayesian model selection for high-dimensional problems such as computational imaging. The framework is suitable for models with a log-convex likelihood, which are ubiquitous in the imaging sciences. The purpose of this article is two-fold. First, we review proximal nested sampling in a pedagogical manner in an attempt to elucidate the framework for physical scientists. Second, we show how proximal nested sampling can be extended in an empirical Bayes setting to support data-driven priors, such as deep neural networks learned from training data.
Text
psf-09-00013
- Version of Record
More information
Published date: 1 December 2023
Identifiers
Local EPrints ID: 491884
URI: http://eprints.soton.ac.uk/id/eprint/491884
ISSN: 2673-9984
PURE UUID: 671c8e84-23f5-421f-ae6a-b3a07767283c
Catalogue record
Date deposited: 04 Jul 2024 18:04
Last modified: 12 Jul 2024 02:06
Export record
Altmetrics
Contributors
Author:
Jason D. McEwen
Author:
Tobías I. Liaudat
Author:
Matthew A. Price
Author:
Xiaohao Cai
Author:
Marcelo Pereyra
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics