Methods Inf Med 1999; 38(02): 125-131
DOI: 10.1055/s-0038-1634175
Original Article
Schattauer GmbH

Comparison of Genetic Algorithms and Other Classification Methods in the Diagnosis of Female Urinary Incontinence

J. Laurikkala
1   Department of Computer Science, University of Tampere, Finland
,
M. Juhola
1   Department of Computer Science, University of Tampere, Finland
,
S. Lammi
2   Department of Computer Science and Applied Mathematics, University of Kuopio, Finland
,
K. Viikki
1   Department of Computer Science, University of Tampere, Finland
› Author Affiliations
Further Information

Publication History

Publication Date:
08 February 2018 (online)

Abstract

Galactica, a newly developed machine-learning system that utilizes a genetic algorithm for learning, was compared with discriminant analysis, logistic regression, k-means cluster analysis, a C4.5 decision-tree generator and a random bit climber hill-climbing algorithm. The methods were evaluated in the diagnosis of female urinary incontinence in terms of prediction accuracy of classifiers, on the basis of patient data. The best methods were discriminant analysis, logistic regression, C4.5 and Galactica. Practically no statistically significant differences existed between the prediction accuracy of these classification methods. We consider that machine-learning systems C4.5 and Galactica are preferable for automatic construction of medical decision aids, because they can cope with missing data values directly and can present a classifier in a comprehensible form. Galactica performed nearly as well as C4.5. The results are in agreement with the results of earlier research, indicating that genetic algorithms are a competitive method for constructing classifiers from medical data.

 
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