Abstract
AbstractBayesian model selection provides a powerful framework for objectively comparing models directly from observed data, without reference to ground truth data. However, Bayesian model selection requires the computation of the marginal likelihood (model evidence), which is computationally challenging, prohibiting its use in many high-dimensional Bayesian inverse problems. With Bayesian imaging applications in mind, in this work we present theproximal nested samplingmethodology to objectively compare alternative Bayesian imaging models for applications that use images to inform decisions under uncertainty. The methodology is based on nested sampling, a Monte Carlo approach specialised for model comparison, and exploits proximal Markov chain Monte Carlo techniques to scale efficiently to large problems and to tackle models that are log-concave and not necessarily smooth (e.g., involving$$\ell _1$$ℓ1or total-variation priors). The proposed approach can be applied computationally to problems of dimension$${\mathcal {O}}(10^6)$$O(106)and beyond, making it suitable for high-dimensional inverse imaging problems. It is validated on large Gaussian models, for which the likelihood is available analytically, and subsequently illustrated on a range of imaging problems where it is used to analyse different choices of dictionary and measurement model.
Funder
Leverhulme Trust
Engineering and Physical Sciences Research Council
Publisher
Springer Science and Business Media LLC
Subject
Computational Theory and Mathematics,Statistics, Probability and Uncertainty,Statistics and Probability,Theoretical Computer Science
Reference50 articles.
1. Bauschke, H.H., Combettes, P.L.: Convex Analysis and Monotone Operator Theory in Hilbert Spaces. Springer-Verlag, New York (2011). https://link.springer.com/book/10.1007/978-1-4419-9467-7
2. Betancourt, M.: Nested sampling with constrained Hamiltonian Monte Carlo. AIP Conference Proceedings 1305, 165 (2011). https://doi.org/10.1063/1.3573613
3. Brewer, B.J., Pártay, L.B., Csányi, G.: Diffusive nested sampling. Stat. Comput. 21, 649–656 (2011)
4. Brosse, N., Durmus, A., Éric Moulines, et al.: Sampling from a log-concave distribution with compact support with proximal Langevin Monte Carlo. In: Kale, S., Shamir, O. (eds) Proceedings of the 2017 Conference on Learning Theory, Proceedings of Machine Learning Research, vol 65. PMLR, Amsterdam, Netherlands, pp. 319–342 (2017)
5. Cai, X., Pereyra, M., McEwen, J.D.: Uncertainty quantification for radio interferometric imaging I: proximal-MCMC methods. Mon. Not. R. Astron. Soc. (MNRAS) 480(3), 4154–4169 (2018)
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