Low-rank tensor reconstruction of concentrated densities with application to Bayesian inversion

dc.bibliographicCitation.firstPage27
dc.bibliographicCitation.volume32
dc.contributor.authorEigel, Martin
dc.contributor.authorGruhlke, Robert
dc.contributor.authorMarschall, Manuel
dc.date.accessioned2022-06-23T08:53:50Z
dc.date.available2022-06-23T08:53:50Z
dc.date.issued2022
dc.description.abstractThis paper presents a novel method for the accurate functional approximation of possibly highly concentrated probability densities. It is based on the combination of several modern techniques such as transport maps and low-rank approximations via a nonintrusive tensor train reconstruction. The central idea is to carry out computations for statistical quantities of interest such as moments based on a convenient representation of a reference density for which accurate numerical methods can be employed. Since the transport from target to reference can usually not be determined exactly, one has to cope with a perturbed reference density due to a numerically approximated transport map. By the introduction of a layered approximation and appropriate coordinate transformations, the problem is split into a set of independent approximations in seperately chosen orthonormal basis functions, combining the notions h- and p-refinement (i.e. “mesh size” and polynomial degree). An efficient low-rank representation of the perturbed reference density is achieved via the Variational Monte Carlo method. This nonintrusive regression technique reconstructs the map in the tensor train format. An a priori convergence analysis with respect to the error terms introduced by the different (deterministic and statistical) approximations in the Hellinger distance and the Kullback–Leibler divergence is derived. Important applications are presented and in particular the context of Bayesian inverse problems is illuminated which is a main motivation for the developed approach. Several numerical examples illustrate the efficacy with densities of different complexity and degrees of perturbation of the transport to the reference density. The (superior) convergence is demonstrated in comparison to Monte Carlo and Markov Chain Monte Carlo methods.eng
dc.description.versionpublishedVersioneng
dc.identifier.urihttps://oa.tib.eu/renate/handle/123456789/9127
dc.identifier.urihttps://doi.org/10.34657/8165
dc.language.isoengeng
dc.publisherDordrecht [u.a.] : Springer Science + Business Media B.V
dc.relation.doihttps://doi.org/10.1007/s11222-022-10087-1
dc.relation.essn1573-1375
dc.relation.ispartofseriesStatistics and computing 32 (2022)
dc.rights.licenseCC BY 4.0 Unported
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.subjectBayesian inversioneng
dc.subjectLow-rankeng
dc.subjectPartial differential equations with random coefficientseng
dc.subjectTensor traineng
dc.subjectUncertainty quantificationeng
dc.subjectVMCeng
dc.subject.ddc004
dc.subject.ddc620
dc.titleLow-rank tensor reconstruction of concentrated densities with application to Bayesian inversioneng
dc.typearticleeng
dc.typeTexteng
dcterms.bibliographicCitation.journalTitleStatistics and computing
tib.accessRightsopenAccesseng
wgl.contributorWIASger
wgl.subjectInformatikger
wgl.subjectIngenieurwissenschaftenger
wgl.typeZeitschriftenartikelger
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