ARTIFICIAL NEURAL NETWORKS IN CLASSIFICATION OF NIR SPECTRAL DATA - DESIGN OF THE TRAINING SET

Citation
W. Wu et al., ARTIFICIAL NEURAL NETWORKS IN CLASSIFICATION OF NIR SPECTRAL DATA - DESIGN OF THE TRAINING SET, Chemometrics and intelligent laboratory systems, 33(1), 1996, pp. 35-46
Citations number
29
Categorie Soggetti
Computer Application, Chemistry & Engineering","Instument & Instrumentation","Chemistry Analytical","Computer Science Artificial Intelligence","Robotics & Automatic Control
ISSN journal
01697439
Volume
33
Issue
1
Year of publication
1996
Pages
35 - 46
Database
ISI
SICI code
0169-7439(1996)33:1<35:ANNICO>2.0.ZU;2-5
Abstract
Artificial neural networks (NN) with back-error propagation were used for the classification with NIR spectra and applied to the classificat ion of different strengths of drugs. Four training set selection metho ds were compared by applying each of them to three different data sets . The NN architecture was selected through a pruning method, and batch ing operation, adaptive learning rate and momentum were used to train the NN. The presented results demonstrate that selection methods based on Kennard-Stone and D-optimal designs are better than those based on the Kohonen self-organized mapping and on random selection methods an d allow 100% correct classification for both recognition and predictio n. The Kennard-Stone design is more practical than the D-optimal desig n. The Kohonen self-organized mapping method is better than the random selection method.