Outlier Resistant PCA Ensembles.

Gabrys, B., Baruque, B. and Corchado, E., 2006. Outlier Resistant PCA Ensembles. In: Gabrys, B., Howlett, R.J. and Jain, L.C., eds. Knowledge-Based Intelligent Information and Engineering Systems: 10th International Conference, Kes 2006, Bournemouth, UK, October 9-11 2006. Berlin: Springer, pp. 432-440.

Full text not available from this repository.

Official URL: http://www.springerlink.com/content/h61ww773303wt0...

DOI: 10.1007/11893011_55

Abstract

Statistical re-sampling techniques have been used extensively and successfully in the machine learning approaches for generation of classifier and predictor ensembles. It has been frequently shown that combining so called unstable predictors has a stabilizing effect on and improves the performance of the prediction system generated in this way. In this paper we use the re-sampling techniques in the context of Principal Component Analysis (PCA). We show that the proposed PCA ensembles exhibit a much more robust behaviour in the presence of outliers which can seriously affect the performance of an individual PCA algorithm. The performance and characteristics of the proposed approaches are illustrated on a number of experimental studies where an individual PCA is compared to the introduced PCA ensemble.

Item Type:Book Section
ISBN:3540465421
Series Name:Lecture Notes in Artificial Intelligence
Volume:3
Number of Pages:1301
ISSN:0302-9743
Series Name:Lecture Notes in Artificial Intelligence
Subjects:Generalities > Computer Science and Informatics > Artificial Intelligence
Generalities > Computer Science and Informatics
Group:School of Design, Engineering & Computing > Smart Technology Research Centre
ID Code:8527
Deposited By:INVALID USER
Deposited On:19 Dec 2008 20:16
Last Modified:07 Mar 2013 15:02
Repository Staff Only -
BU Staff Only -
Help Guide - Editing Your Items in BURO