Publication details

A Comparison of Some Parametric and Nonparametric Discrimination Procedures

Authors

FORBELSKÁ Marie

Year of publication 2002
Type Article in Proceedings
Conference Summer School DATASTAT 01 Folia Facultatis Scientiarum Naturalium Universitatis Masarykianae Brunensis
MU Faculty or unit

Faculty of Science

Citation
Field Applied statistics, operation research
Keywords linear and quadratic discriminant analysis; nonparametric discriminant analysis; kernel density estimation; product kernels; bandwidth choice
Description This article compares the performance of parametric and nonparametric discrimination. After a brief description of the discriminant analysis problem the parametric and nonparametric approaches are described. The multivariate product Gaussian and polynomial kernels with various datadriven choices of the bandwidth are used for density estimators and this nonparametric approaches are compared with classical one by some real data. Overall percentages of the misclassification and computer time are used as the measure of performance.
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