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Status已发表Published
TitleParallel probabilistic graphical model approach for nonparametric Bayesian inference
Creator
Date Issued2018-11-01
Source PublicationJournal of Computational Physics
ISSN0021-9991
Volume372Pages:546-563
Abstract

We propose an efficient uncertainty quantification framework that makes use of multiple probabilistic graphical models to yield a nonparametric Gaussian mixture description of the target probability distribution. The methodology is indeed generic, but this work focuses on its application to the particular class of the inference problems arising from the hidden Markov process and the associated observations in a sequence. The implementation procedure is demonstrated with the dynamical system models in both low and high dimension. In case of the low dimension, it is shown that the usual factor graph for the sequential data can be used to produce a very accurate approximate solution. However, for high dimensional systems, a new family of the factor graphs are developed in order to achieve an effective dimension reduction and to facilitate a synergetic application together with multiple graphs in addressing the Bayesian data assimilation. As a result, a new paradigm for the probabilistic filtering and smoothing emerges, and the applicability of the graphical model approach has been broadened.

KeywordBayesian inference Data assimilation Gaussian mixture Probabilistic graphical model
DOI10.1016/j.jcp.2018.06.057
URLView source
Indexed BySCIE
Language英语English
WOS Research AreaComputer Science ; Physics
WOS SubjectComputer Science, Interdisciplinary Applications ; Physics, Mathematical
WOS IDWOS:000443284400026
Scopus ID2-s2.0-85049097524
Citation statistics
Cited Times:1[WOS]   [WOS Record]     [Related Records in WOS]
Document TypeJournal article
Identifierhttp://repository.uic.edu.cn/handle/39GCC9TT/9766
CollectionResearch outside affiliated institution
Corresponding AuthorLee, Wonjung
Affiliation
1.Department of Mathematics,City University of Hong Kong,Hong Kong
2.Department of Aerospace and Mechanical Engineering,University of Notre Dame,United States
3.Centre for Predictive Modelling,School of Engineering,University of Warwick,United Kingdom
Recommended Citation
GB/T 7714
Lee, Wonjung,Zabaras, Nicholas. Parallel probabilistic graphical model approach for nonparametric Bayesian inference[J]. Journal of Computational Physics, 2018, 372: 546-563.
APA Lee, Wonjung, & Zabaras, Nicholas. (2018). Parallel probabilistic graphical model approach for nonparametric Bayesian inference. Journal of Computational Physics, 372, 546-563.
MLA Lee, Wonjung,et al."Parallel probabilistic graphical model approach for nonparametric Bayesian inference". Journal of Computational Physics 372(2018): 546-563.
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