ICA as a preprocessing technique for classification
Other authors
Publication date
2004ISBN
3-540-23056-4
ISSN
0302-9743
Abstract
In this paper we propose the use of the independent component
analysis (ICA) [1] technique for improving the classification rate of decision
trees and multilayer perceptrons [2], [3]. The use of an ICA for the preprocessing
stage, makes the structure of both classifiers simpler, and therefore
improves the generalization properties. The hypothesis behind the proposed
preprocessing is that an ICA analysis will transform the feature space into a
space where the components are independent, and aligned to the axes and
therefore will be more adapted to the way that a decision tree is constructed.
Also the inference of the weights of a multilayer perceptron will be much easier
because the gradient search in the weight space will follow independent
trajectories. The result is that classifiers are less complex and on some databases
the error rate is lower. This idea is also applicable to regression
Document Type
Object of conference
Language
English
Keywords
Tractament del senyal
Separació (Tecnologia)
Pages
8 p.
Publisher
Springer
Citation
V. Sanchez-Poblador, E. Monte-Moreno, J. Solé-Casals “ICA as a preprocessing technique for classification”, Independent Component Analysis and Blind Signal Separation: Fifth International Conference, ICA 2004, Granada, Spain, September 22-24, 2004. Proceedings, ISBN: 3-540-23056-4. DOI: 10.1007/b100528. Chapter: p. 1165. LNCS, Publisher: Springer-Verlag Heidelberg ISSN: 0302-9743. Volume 3195/2004
This item appears in the following Collection(s)
- Documents de Congressos [174]
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