DocumentCode :
862761
Title :
Robust Sequential Learning Algorithms for Linear Observation Models
Author :
Deng, Guang
Author_Institution :
Dept. of Electron. Eng., La Trobe Univ., Bundoora, Vic.
Volume :
55
Issue :
6
fYear :
2007
fDate :
6/1/2007 12:00:00 AM
Firstpage :
2472
Lastpage :
2485
Abstract :
This paper presents a study of sequential parameter estimation based on a linear non-Gaussian observation model. To develop robust algorithms, we consider a family of heavy-tailed distributions that can be expressed as the scale mixture of Gaussian and extend the development to include some robust penalty functions. We treat the problem as a Bayesian learning problem and develop an iterative algorithm by using the Laplace approximation for the posterior and the minorization-maximization (MM) algorithm as an optimization tool. We then study a one-step implementation of the iterative algorithm. This leads to a family of generalized robust RLS-type of algorithms which include several well-known algorithms as special cases. Using a further simplification that the covariance is fixed, leads to a family of generalized robust LMS-type of algorithms. Through mathematical analysis and simulations, we demonstrate the robustness of these algorithms
Keywords :
Bayes methods; approximation theory; iterative methods; learning (artificial intelligence); Bayesian learning problem; Laplace approximation; iterative algorithm; linear non-Gaussian observation model; linear observation models; minorization-maximization algorithm; robust penalty functions; robust sequential learning algorithms; Adaptive filters; Additive noise; Bayesian methods; Gaussian noise; Iterative algorithms; Least squares approximation; Maximum likelihood estimation; Noise robustness; Resonance light scattering; Training data; Iterative Bayesian learning; Laplace approximation; robust adaptive filters;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2007.893733
Filename :
4203063
Link To Document :
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