To read this content please select one of the options below:

Neural and MTS Algorithms for Feature Selection

Chao‐Ton Su (Department of Industrial Engineering and Management, National Chiao Tung University, Hsinchu, Taiwan)
Te‐Sheng Li (Department of Industrial Engineering and Management, Minghsin Institute of Technology, Hsinchu, Taiwan)

Asian Journal on Quality

ISSN: 1598-2688

Article publication date: 21 August 2002

97

Abstract

The relationships among multi‐dimensional data (such as medical examination data) with ambibuity and variation are difficult to explore. The traditional approach to building a data classification system requires the formulation of rules by which the input data can be analyzed. The formulation of such rules is very difficult with large sets of input data. This paper first describes two classification approaches using back‐propagation (BP) neural network and Mahalanobis distance (MD) classifier, and then proposes two classification approaches for multi‐dimensional feature selection. The first one proposed is a feature selection procedure from the trained back‐propagation (BP) neural network. The basic idea of this procedure is to compare the multiplication weights between input and hidden layer and hidden and output layer. In order to simplify the structure, only the multiplication weights of large absolute values are used. The second approach is Mahalanobis‐Taguchi system (MTS) originally suggested by Dr. Taguchi. The MTS performs Taguchi’s fractional factorial design based on the Mahalanobis distance as a performance metric. We combine the automatic thresholding with MD; it can deal with a reduced model, which is the focus of this paper. In this work, two case studies will be used as examples to compare and discuss the complete and reduced models employing BP neural network and MD classifier. The implementation results show that proposed approaches are effective and powerful for the classification.

Keywords

Citation

Su, C. and Li, T. (2002), "Neural and MTS Algorithms for Feature Selection", Asian Journal on Quality, Vol. 3 No. 2, pp. 113-131. https://doi.org/10.1108/15982688200200023

Publisher

:

MCB UP Ltd

Copyright © 2002, MCB UP Limited

Related articles