DocumentCode
1457941
Title
Iterative algorithms for learning a linear gaussian observation model with an exponential power scale mixture prior
Author
Deng, Gang
Author_Institution
Dept. of Electron. Eng., La Trobe Univ., Bundoora, VIC, Australia
Volume
5
Issue
1
fYear
2011
Firstpage
58
Lastpage
65
Abstract
The authors study an iterative algorithm for learning a linear Gaussian observation model with an exponential power scale mixture prior (EPSM). This is a generalisation of previous study based on the Gaussian scale mixture prior. The authors use the principle of majorisation minimisation to derive the general iterative algorithm which is related to a reweighted lp-minimisation algorithm. The authors then show that the Gaussian and Laplacian scale mixtures are two special cases of the EPSM and the corresponding learning algorithms are related to the reweighted l2-and l1-minimisation algorithms, respectively. The authors also study a particular case of the EPSM which is a Pareto distribution and discuss Bayesian methods for parameter estimation.
Keywords
Bayes methods; Gaussian distribution; Pareto distribution; iterative methods; minimisation; parameter estimation; Bayesian methods; EPSM; Gaussian scale mixtures; Laplacian scale mixtures; Pareto distribution; exponential power scale mixture; iterative algorithms; learning algorithms; linear Gaussian observation model; parameter estimation; reweighted lρ-minimisation algorithm;
fLanguage
English
Journal_Title
Signal Processing, IET
Publisher
iet
ISSN
1751-9675
Type
jour
DOI
10.1049/iet-spr.2009.0236
Filename
5719469
Link To Document