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Exact misclassification probabilities for plug-in normal quadratic discriminant functions II. The heterogeneous case
[摘要] We consider the problem of discriminating between two independent multivariate normal populations, N-p(mu(1), Sigma(1)) and N-p(mu(2), Sigma(2)) having distinct mean vectors mu(1) and mu(2) and distinct covariance matrices Sigma(2), and Sigma(2). The parameters mu(1), mu(2), Sigma(1), and Sigma(2) are unknown and are estimated by means of independent random training samples from each population. We derive a stochastic representation for the exact distribution of the plug-in quadratic discriminant function for classifying a new observation between the two populations. The stochastic representation involves only the classical standard normal, chi-square, and F distributions and is easily implemented for simulation purposes. Using Monte Carlo simulation of the stochastic representation we provide applications to the estimation of misclassification probabilities for the well-known iris data studied by Fisher (Ann. Eugen. 7 (1936), 179-188); a data set on corporate financial ratios provided by Johnson and Wichern (Applied Multivariate Statistical Analysis, 4th ed., Prentice-Hall, Englewood Cliffs, NJ, 1998); and a data set analyzed by Reaven and Miller (Diabetologia 16 (1979), 17-24) in a classification of diabetic status. (C) 2002 Elsevier Science (USA).
[发布日期] 2002-08-01 [发布机构] 
[效力级别]  [学科分类] 
[关键词] apparent error rate;Bessel function of matrix argument;corporate financial data;cross-validation;diabetes data;discrimmant analysis;hold-out method;iris data;misclassification probability;multivariate gamma function;multivariate norinal distribution;resubstitution method;stochastic representation;Wishart distribution [时效性] 
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