Estimation of Error Rates in Discriminant Analysis with Selection of Variables

Accurate estimation of misclassification rates in discriminant analysis with selection of variables by, for example, a stepwise algorithm, is complicated by the large optimistic bias inherent in standard estimators such as those obtained by the resubstitution method. Application of a bootstrap adjus...

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Veröffentlicht in:Biometrics 1989-03, Vol.45 (1), p.289-299
Hauptverfasser: Snapinn, Steven M., Knoke, James D.
Format: Artikel
Sprache:eng
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Zusammenfassung:Accurate estimation of misclassification rates in discriminant analysis with selection of variables by, for example, a stepwise algorithm, is complicated by the large optimistic bias inherent in standard estimators such as those obtained by the resubstitution method. Application of a bootstrap adjustment can reduce the bias of the resubstitution method; however, the bootstrap technique requires the variable selection procedure to be repeated many times and is therefore difficult to compute. In this paper we propose a smoothed estimator that requires relatively little computation and which, on the basis of a Monte Carlo sampling study, is found to perform generally at least as well as the bootstrap method.
ISSN:0006-341X
1541-0420
DOI:10.2307/2532053