Show simple item record

contributor authorTsilifis, Panagiotis
contributor authorBilionis, Ilias
contributor authorKatsounaros, Ioannis
contributor authorZabaras, Nicholas
date accessioned2017-05-09T01:34:30Z
date available2017-05-09T01:34:30Z
date issued2016
identifier issn1048-9002
identifier othervvuq_001_03_031004.pdf
identifier urihttp://yetl.yabesh.ir/yetl/handle/yetl/162850
description abstractThe major drawback of the Bayesian approach to model calibration is the computational burden involved in describing the posterior distribution of the unknown model parameters arising from the fact that typical Markov chain Monte Carlo (MCMC) samplers require thousands of forward model evaluations. In this work, we develop a variational Bayesian approach to model calibration which uses an information theoretic criterion to recast the posterior problem as an optimization problem. Specifically, we parameterize the posterior using the family of Gaussian mixtures and seek to minimize the information loss incurred by replacing the true posterior with an approximate one. Our approach is of particular importance in underdetermined problems with expensive forward models in which both the classical approach of minimizing a potentially regularized misfit function and MCMC are not viable options. We test our methodology on two surrogatefree examples and show that it dramatically outperforms MCMC methods.
publisherThe American Society of Mechanical Engineers (ASME)
titleComputationally Efficient Variational Approximations for Bayesian Inverse Problems
typeJournal Paper
journal volume1
journal issue3
journal titleJournal of Verification, Validation and Uncertainty Quantification
identifier doi10.1115/1.4034102
journal fristpage31004
journal lastpage31004
identifier eissn1528-8927
treeJournal of Verification, Validation and Uncertainty Quantification:;2016:;volume( 001 ):;issue: 003
contenttypeFulltext


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record