CLASSIFICATION OF DETECTORS FOR ION CHROMATOGRAPHY USING PRINCIPAL COMPONENTS REGRESSION AND LINEAR DISCRIMINANT-ANALYSIS

Citation
Z. Ramadan et al., CLASSIFICATION OF DETECTORS FOR ION CHROMATOGRAPHY USING PRINCIPAL COMPONENTS REGRESSION AND LINEAR DISCRIMINANT-ANALYSIS, Chemometrics and intelligent laboratory systems, 40(2), 1998, pp. 165-174
Citations number
23
Categorie Soggetti
Computer Science Artificial Intelligence","Robotics & Automatic Control","Instument & Instrumentation","Chemistry Analytical","Computer Science Artificial Intelligence","Robotics & Automatic Control
ISSN journal
01697439
Volume
40
Issue
2
Year of publication
1998
Pages
165 - 174
Database
ISI
SICI code
0169-7439(1998)40:2<165:CODFIC>2.0.ZU;2-O
Abstract
Principal components regression (PCR) and linear discriminant analysis (LDA) have been applied to the classification of ion chromatographic detectors using information about the sample and other IC method condi tions (19 attributes in total), a training set of 12 693 cases and a r andomly-chosen test set of 1410 cases. Missing data was entered as a s eparate 'unknown' code. When the value of each attribute was coded in a simple cardinal series (e.g., column = 1, 2, 3, etc.), PCR correctly predicted the detector in 27% of the training set and 28% of the test set. By creating a variable (taking a value between 0 (absent) and 1 (present)) for each value of each attribute, the PCR prediction for bo th sets increased to 60%. LDA was more successful, predicting 69% of t he detectors of each set, using a prior probability of the frequency o f a given detector in the database, but this included zero hits for de tectors that were poorly represented in the database. If equal prior p robabilities were chosen the overall success rate dropped to 33% but n ow the classification of less frequently used detectors was improved. The ability of these numerically-oriented methods to classify discrete , non-numerical data, is surprisingly good and compares with induction methods, neural networks and expert systems reported previously. (C) 1998 Elsevier Science B.V. All rights reserved.