Statistical techniques vs. SEE5 algorithman application to a small business environment
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Universidad de Oviedo
info
ISSN: 1577-8517
Datum der Publikation: 2001
Ausgabe: 1
Nummer: 2
Seiten: 153-179
Art: Artikel
Andere Publikationen in: The International Journal of Digital Accounting Research
Zusammenfassung
The aim of this research is to compare the accuracy of a rule induction classifier system -Quinlan's SEE5- with linear discriminant analysis and logit. The classification task chosen is the differentiation of the most efficient companies from the least efficient ones on the basis of a set of financial variables. The sample consists of a database containing the annual accounts of the companies located in the Principality of Asturias (Spain), which are mainly small businesses. The main results indicate that SEE5 outperforms logit, but it is not clearly better than discriminant analysis. However, SEE5 models suffer from bigger increases in error rates when tested with validation samples. Another interesting finding is that in SEE5 systems both the number of variables selected and the number of rules inferred grow when sample size increases.