Title :
An efficient extraction-based Bagging ensemble for high-dimensional data classification
Author :
Hsiao-Yun Huang ; Yen-Chieh Li
Author_Institution :
Dept. of Stat. & Inf. Sci., Fu-Jen Catholic Univ., Taipei, Taiwan
Abstract :
In high-dimensional data classification, the method employed should be both powerful and robust against the SSS (small sample size) problem. LDA is a classical, efficient, and powerful feature extraction method that can be applied to effectively reduce the feature space dimension and thus ease the adverse effect of the SSS problem. However, LDA itself suffers from the SSS problem due to the nature of its separability measure. In this study, a modified version of LDA called ARLDA is proposed to efficiently counter the SSS problem of LDA. To increase performance, ARLDA is embedded in a Bagging framework to form a multi-classifier ensemble called EEBBE. The performance of EEBBE is evaluated by experiments based on a hyperspectral image and three UCI data sets. The results showed that EEBBE is a very promising classification method.
Keywords :
feature extraction; image classification; learning (artificial intelligence); ARLDA; EEBBE ensemble; SSS problem; classification method; extraction-based bagging ensemble; feature extraction method; feature space dimension; high-dimensional data classification; hyperspectral image; linear discriminant analysis; separability measure; small sample size problem; Bagging; Classification; Ensemble; Feature Extraction; High-dimensional Data;
Conference_Titel :
Soft Computing and Intelligent Systems (SCIS) and 13th International Symposium on Advanced Intelligent Systems (ISIS), 2012 Joint 6th International Conference on
Conference_Location :
Kobe
Print_ISBN :
978-1-4673-2742-8
DOI :
10.1109/SCIS-ISIS.2012.6505085