AbstractA class of discriminant rules which includes Fisher’s linear discriminant function and the likelihood ratio criterion is defined. Using asymptotic expansions of the distributions of the discriminant functions in this class, we derive a formula for cut-off points which satisfy some conditions on misclassification probabilities, and derive the optimal rules for some criteria. Some numerical experiments are carried out to examine the performance of the optimal rules for finite numbers of samples
This paper is a survey study on estimation of the pro- bability of misclassifications in two-groups d...
AbstractIn this paper an expansion for the variance of the error rate of a classification rule is de...
This paper is a survey study on applications of boot- strap methods for estimating the probability o...
A class of discriminant rules which includes the Fisher’s linear discriminant function and the likel...
AbstractLet α(n1, n2) be the probability of classifying an observation from population Π1 into popul...
Optimal classification rules based on linear functions which maximize the area under the relative o...
AbstractWe consider the problem of discriminating, on the basis of random “training” samples, betwee...
AbstractThis paper deals with two criteria for selection of variables for the discriminant analysis ...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
An observation assumed to have come from one of two populations, (PI)(,1) and (PI)(,2), is to be cla...
AbstractMonte Carlo estimates have been obtained for the unconditional probability of misclassificat...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
We present a new rule for discriminating among continuous populations which are not multivariate nor...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
AbstractTheoretical accuracies are studied for asymtotic approximations of the expected probabilitie...
This paper is a survey study on estimation of the pro- bability of misclassifications in two-groups d...
AbstractIn this paper an expansion for the variance of the error rate of a classification rule is de...
This paper is a survey study on applications of boot- strap methods for estimating the probability o...
A class of discriminant rules which includes the Fisher’s linear discriminant function and the likel...
AbstractLet α(n1, n2) be the probability of classifying an observation from population Π1 into popul...
Optimal classification rules based on linear functions which maximize the area under the relative o...
AbstractWe consider the problem of discriminating, on the basis of random “training” samples, betwee...
AbstractThis paper deals with two criteria for selection of variables for the discriminant analysis ...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
An observation assumed to have come from one of two populations, (PI)(,1) and (PI)(,2), is to be cla...
AbstractMonte Carlo estimates have been obtained for the unconditional probability of misclassificat...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
We present a new rule for discriminating among continuous populations which are not multivariate nor...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
AbstractTheoretical accuracies are studied for asymtotic approximations of the expected probabilitie...
This paper is a survey study on estimation of the pro- bability of misclassifications in two-groups d...
AbstractIn this paper an expansion for the variance of the error rate of a classification rule is de...
This paper is a survey study on applications of boot- strap methods for estimating the probability o...