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Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models

In this paper, we describe a general variational Bayesian approach for approximate inference on nonlinear stochastic dynamic models. This scheme extends established approximate inference on hidden-states to cover: (i) nonlinear evolution and observation functions, (ii) unknown parameters and (precis...

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Detalles Bibliográficos
Autores principales: Daunizeau, J., Friston, K.J., Kiebel, S.J.
Formato: Texto
Lenguaje:English
Publicado: North-Holland 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2767160/
https://www.ncbi.nlm.nih.gov/pubmed/19862351
http://dx.doi.org/10.1016/j.physd.2009.08.002
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author Daunizeau, J.
Friston, K.J.
Kiebel, S.J.
author_facet Daunizeau, J.
Friston, K.J.
Kiebel, S.J.
author_sort Daunizeau, J.
collection PubMed
description In this paper, we describe a general variational Bayesian approach for approximate inference on nonlinear stochastic dynamic models. This scheme extends established approximate inference on hidden-states to cover: (i) nonlinear evolution and observation functions, (ii) unknown parameters and (precision) hyperparameters and (iii) model comparison and prediction under uncertainty. Model identification or inversion entails the estimation of the marginal likelihood or evidence of a model. This difficult integration problem can be finessed by optimising a free-energy bound on the evidence using results from variational calculus. This yields a deterministic update scheme that optimises an approximation to the posterior density on the unknown model variables. We derive such a variational Bayesian scheme in the context of nonlinear stochastic dynamic hierarchical models, for both model identification and time-series prediction. The computational complexity of the scheme is comparable to that of an extended Kalman filter, which is critical when inverting high dimensional models or long time-series. Using Monte-Carlo simulations, we assess the estimation efficiency of this variational Bayesian approach using three stochastic variants of chaotic dynamic systems. We also demonstrate the model comparison capabilities of the method, its self-consistency and its predictive power.
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spelling pubmed-27671602009-10-26 Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models Daunizeau, J. Friston, K.J. Kiebel, S.J. Physica D Article In this paper, we describe a general variational Bayesian approach for approximate inference on nonlinear stochastic dynamic models. This scheme extends established approximate inference on hidden-states to cover: (i) nonlinear evolution and observation functions, (ii) unknown parameters and (precision) hyperparameters and (iii) model comparison and prediction under uncertainty. Model identification or inversion entails the estimation of the marginal likelihood or evidence of a model. This difficult integration problem can be finessed by optimising a free-energy bound on the evidence using results from variational calculus. This yields a deterministic update scheme that optimises an approximation to the posterior density on the unknown model variables. We derive such a variational Bayesian scheme in the context of nonlinear stochastic dynamic hierarchical models, for both model identification and time-series prediction. The computational complexity of the scheme is comparable to that of an extended Kalman filter, which is critical when inverting high dimensional models or long time-series. Using Monte-Carlo simulations, we assess the estimation efficiency of this variational Bayesian approach using three stochastic variants of chaotic dynamic systems. We also demonstrate the model comparison capabilities of the method, its self-consistency and its predictive power. North-Holland 2009-11-01 /pmc/articles/PMC2767160/ /pubmed/19862351 http://dx.doi.org/10.1016/j.physd.2009.08.002 Text en © 2009 Elsevier B.V. https://creativecommons.org/licenses/by/3.0/ Open Access under CC BY 3.0 (https://creativecommons.org/licenses/by/3.0/) license
spellingShingle Article
Daunizeau, J.
Friston, K.J.
Kiebel, S.J.
Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models
title Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models
title_full Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models
title_fullStr Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models
title_full_unstemmed Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models
title_short Variational Bayesian identification and prediction of stochastic nonlinear dynamic causal models
title_sort variational bayesian identification and prediction of stochastic nonlinear dynamic causal models
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2767160/
https://www.ncbi.nlm.nih.gov/pubmed/19862351
http://dx.doi.org/10.1016/j.physd.2009.08.002
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