Computationally Efficient Variational Approximations for Bayesian Inverse Problems

被引:0
|
作者
Tsilifis P. [1 ]
Bilionis I. [2 ]
Katsounaros I. [3 ]
Zabaras N. [4 ]
机构
[1] Department of Mathematics, University of Southern California, Los Angeles, 90089-2532, CA
[2] School of Mechanical Engineering, Purdue University, West Lafayette, 47906-2088, IN
[3] Leiden Institute of Chemistry, Leiden University, Einsteinweg 55, P.O. Box 9502, Leiden
[4] Warwick Centre for Predictive Modeling, University of Warwick, Coventry
来源
| 1600年 / American Society of Mechanical Engineers (ASME)卷 / 01期
基金
英国工程与自然科学研究理事会;
关键词
Bayesian - Bayesian approaches - Computational burden - Computationally efficient - Forward modeling - Markov chain Monte Carlo - Markov Chain Monte-Carlo - Model calibration - Posterior distributions - Variational approximation;
D O I
10.1115/1.4034102
中图分类号
学科分类号
摘要
The 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 surrogate-free examples and show that it dramatically outperforms MCMC methods. Copyright © 2016 by ASME
引用
收藏
相关论文
共 50 条
  • [21] An Introduction to Bayesian Inference via Variational Approximations
    Grimmer, Justin
    POLITICAL ANALYSIS, 2011, 19 (01) : 32 - 47
  • [22] A variational Bayesian approach for inverse problems with skew-t error distributions
    Guha, Nilabja
    Wu, Xiaoqing
    Efendiev, Yalchin
    Jin, Bangti
    Mallick, Bani K.
    JOURNAL OF COMPUTATIONAL PHYSICS, 2015, 301 : 377 - 393
  • [23] Stochastic spectral methods for efficient Bayesian solution of inverse problems
    Marzouk, YM
    Najm, HN
    Rahn, LA
    BAYESIAN INFERENCE AND MAXIMUM ENTROPY METHODS IN SCIENCE AND ENGINEERING, 2005, 803 : 104 - 111
  • [24] Computationally efficient algorithms for state estimation with ellipsoidal approximations
    Maksarov, DG
    Norton, JP
    INTERNATIONAL JOURNAL OF ADAPTIVE CONTROL AND SIGNAL PROCESSING, 2002, 16 (06) : 411 - 434
  • [25] COMPUTATIONALLY EFFICIENT APPROXIMATIONS TO STRATIFORM CLOUD MICROPHYSICS PARAMETERIZATION
    GHAN, SJ
    EASTER, RC
    MONTHLY WEATHER REVIEW, 1992, 120 (08) : 1572 - 1582
  • [26] EFFICIENT ALGORITHMS FOR BAYESIAN INVERSE PROBLEMS WITH WHITTLE--MATERN PRIORS
    Antil, Harbir
    Saibaba, Arvind K.
    SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2024, 46 (02): : S176 - S198
  • [27] A Computationally Efficient Approach to Fully Bayesian Benchmarking
    Okonek, Taylor
    Wakefield, Jon
    JOURNAL OF OFFICIAL STATISTICS, 2024, 40 (02) : 283 - 316
  • [28] Computationally efficient Bayesian quantum state tomography
    Lukens, Joseph M.
    Law, Kody J. H.
    Jasra, Ajay
    Lougovski, Pavel
    2020 IEEE PHOTONICS CONFERENCE (IPC), 2020,
  • [29] Computationally efficient Bayesian sequential function monitoring
    Shamp, Wright
    Varbanov, Roumen
    Chicken, Eric
    Linero, Antonio
    Yang, Yun
    JOURNAL OF QUALITY TECHNOLOGY, 2021, 54 (01) : 1 - 19
  • [30] Variational Bayesian inference with Gaussian-mixture approximations
    Zobay, O.
    ELECTRONIC JOURNAL OF STATISTICS, 2014, 8 : 355 - 389