DocumentCode :
1762180
Title :
Efficient Variational Bayesian Approximation Method Based on Subspace Optimization
Author :
Yuling Zheng ; Fraysse, Aurelia ; Rodet, Thomas
Author_Institution :
Centre Nat. de la Rech. Sci., Univ. of Paris-Sud, Orsay, France
Volume :
24
Issue :
2
fYear :
2015
fDate :
Feb. 2015
Firstpage :
681
Lastpage :
693
Abstract :
Variational Bayesian approximations have been widely used in fully Bayesian inference for approximating an intractable posterior distribution by a separable one. Nevertheless, the classical variational Bayesian approximation (VBA) method suffers from slow convergence to the approximate solution when tackling large dimensional problems. To address this problem, we propose in this paper a more efficient VBA method. Actually, variational Bayesian issue can be seen as a functional optimization problem. The proposed method is based on the adaptation of subspace optimization methods in Hilbert spaces to the involved function space, in order to solve this optimization problem in an iterative way. The aim is to determine an optimal direction at each iteration in order to get a more efficient method. We highlight the efficiency of our new VBA method and demonstrate its application to image processing by considering an ill-posed linear inverse problem using a total variation prior. Comparisons with state of the art variational Bayesian methods through a numerical example show a notable improvement in computation time.
Keywords :
Hilbert spaces; approximation theory; image processing; iterative methods; optimisation; Bayesian inference; Bayesian methods; Hilbert spaces; VBA; efficient variational Bayesian approximation method; functional optimization problem; image processing; intractable posterior distribution; iterative way; linear inverse problem; optimal direction; subspace optimization methods; Approximation methods; Bayes methods; Hilbert space; Inverse problems; Optimization methods; TV; Variational Bayesian approximation; large dimensional problems; subspace optimization; total variation; unsupervised approach;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2014.2383321
Filename :
6990542
Link To Document :
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