DocumentCode
32646
Title
FastICA Algorithm: Five Criteria for the Optimal Choice of the Nonlinearity Function
Author
Dermoune, Azzouz ; Wei, Ta-Chin
Author_Institution
Laboratoire Paul Painlevé, USTL-UMR-CNRS 8524. UFR de Mathématiques, Bât. M2, Villeneuve d´Ascq Cédex, France
Volume
61
Issue
8
fYear
2013
fDate
15-Apr-13
Firstpage
2078
Lastpage
2087
Abstract
Using an infinite sample, the contrast function and the FastICA algorithm are deterministic. In the practical case, we have only a finite sample. Then the contrast function and the FastICA algorithm become estimators of the deterministic case. This paper provides a unified study of the deflation FastICA algorithm assuming a finite or an infinite sample. We consider four random probability distributions based on the finite sample, and construct four FastICA estimators. We show that under mild conditions, each of these estimators are equal to a local minimizer of the contrast function with respect to the underlying random probability distribution. Making use of the existing results of M-estimators, we give a rigorous analysis of the asymptotic errors of FastICA estimators. We derive five criteria for the optimal choice of the nonlinearity function.
Keywords
Abstracts; Algorithm design and analysis; Convergence; Covariance matrix; Probability distribution; Standards; Vectors; Asymptotic normality; FastICA; contrast function; convergence rate; mixture of Gaussian distributions; nonlinearity;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2013.2243440
Filename
6422409
Link To Document