Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion
Abstract We are interested in studying Gaussian Markov random fields as correlation priors for Bayesian inversion. We construct the correlation priors to be discretisation-invariant, which means, loosely speaking, that the discrete priors converge to continuous priors at the discretisation limit. W...
Main Author: | |
---|---|
Other Authors: | |
Format: | Doctoral Thesis |
Language: | English |
Published: |
University of Oulu
2015
|
Subjects: | |
Online Access: | http://urn.fi/urn:isbn:9789526207544 http://nbn-resolving.de/urn:isbn:9789526207544 |
id |
ndltd-oulo.fi-oai-oulu.fi-isbn978-952-62-0754-4 |
---|---|
record_format |
oai_dc |
spelling |
ndltd-oulo.fi-oai-oulu.fi-isbn978-952-62-0754-42019-11-30T04:40:23ZDiscretisation-invariant and computationally efficient correlation priors for Bayesian inversionRoininen, L. (Lassi)info:eu-repo/semantics/openAccess© University of Oulu, 2015info:eu-repo/semantics/altIdentifier/pissn/1456-3673Bayesian statistical inverse problemsGaussian Markov random fieldsconvergencediscretisationstochastic partial differential equationsAbstract We are interested in studying Gaussian Markov random fields as correlation priors for Bayesian inversion. We construct the correlation priors to be discretisation-invariant, which means, loosely speaking, that the discrete priors converge to continuous priors at the discretisation limit. We construct the priors with stochastic partial differential equations, which guarantees computational efficiency via sparse matrix approximations. The stationary correlation priors have a clear statistical interpretation through the autocorrelation function. We also consider how to make structural model of an unknown object with anisotropic and inhomogeneous Gaussian Markov random fields. Finally we consider these fields on unstructured meshes, which are needed on complex domains. The publications in this thesis contain fundamental mathematical and computational results of correlation priors. We have considered one application in this thesis, the electrical impedance tomography. These fundamental results and application provide a platform for engineers and researchers to use correlation priors in other inverse problem applications.University of OuluLehtinen, M. (Markku)Serov, V. (Valeri)2015-06-05info:eu-repo/semantics/doctoralThesisinfo:eu-repo/semantics/publishedVersionapplication/pdfhttp://urn.fi/urn:isbn:9789526207544urn:isbn:9789526207544eng |
collection |
NDLTD |
language |
English |
format |
Doctoral Thesis |
sources |
NDLTD |
topic |
Bayesian statistical inverse problems Gaussian Markov random fields convergence discretisation stochastic partial differential equations |
spellingShingle |
Bayesian statistical inverse problems Gaussian Markov random fields convergence discretisation stochastic partial differential equations Roininen, L. (Lassi) Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion |
description |
Abstract
We are interested in studying Gaussian Markov random fields as correlation priors for Bayesian inversion. We construct the correlation priors to be discretisation-invariant, which means, loosely speaking, that the discrete priors converge to continuous priors at the discretisation limit. We construct the priors with stochastic partial differential equations, which guarantees computational efficiency via sparse matrix approximations. The stationary correlation priors have a clear statistical interpretation through the autocorrelation function.
We also consider how to make structural model of an unknown object with anisotropic and inhomogeneous Gaussian Markov random fields. Finally we consider these fields on unstructured meshes, which are needed on complex domains.
The publications in this thesis contain fundamental mathematical and computational results of correlation priors. We have considered one application in this thesis, the electrical impedance tomography. These fundamental results and application provide a platform for engineers and researchers to use correlation priors in other inverse problem applications. |
author2 |
Lehtinen, M. (Markku) |
author_facet |
Lehtinen, M. (Markku) Roininen, L. (Lassi) |
author |
Roininen, L. (Lassi) |
author_sort |
Roininen, L. (Lassi) |
title |
Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion |
title_short |
Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion |
title_full |
Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion |
title_fullStr |
Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion |
title_full_unstemmed |
Discretisation-invariant and computationally efficient correlation priors for Bayesian inversion |
title_sort |
discretisation-invariant and computationally efficient correlation priors for bayesian inversion |
publisher |
University of Oulu |
publishDate |
2015 |
url |
http://urn.fi/urn:isbn:9789526207544 http://nbn-resolving.de/urn:isbn:9789526207544 |
work_keys_str_mv |
AT roininenllassi discretisationinvariantandcomputationallyefficientcorrelationpriorsforbayesianinversion |
_version_ |
1719299958246473728 |