In this paper, the discrimination and classification problem associated with the persistent non normal distribution has been studied. Sampling from non normal distribution is assessed through the distribution of errors of misclassification in respect of Edgeworth Series Distribution (ESD) which is restricted to asymmetry. The effects of applying a normal classificatory rule (ND) when the distribution is ESD by empirical approach is examined by comparing the errors of misclassication for ESD with ND using small sample sizes at every level of skewness factor. The empirical results obtained show that the normal procedure is sturdy against departure from normality. This is evident from the total probabilities of misclassification that are n...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
It is common to assume a normal distribution when discriminating and classifying a multivariate data...
This paper is a survey study on applications of boot- strap methods for estimating the probability o...
This thesis covers misclassification probabilities via an Edgeworth-type expansion of the maximum li...
The exact distribution of a classification function is often complicated to allow for easy numerical...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
We study the theoretical misclassication probability of linear and quadratic classiers and examine t...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
Errors of misclassification and their probabilities are studied for classification problems associat...
An observation assumed to have come from one of two populations, (PI)(,1) and (PI)(,2), is to be cla...
This paper is a survey study on estimation of the pro- bability of misclassifications in two-groups d...
AbstractWe consider the problem of discriminating, on the basis of random “training” samples, betwee...
AbstractIn this paper some ideas on experimental designs are used in discriminant analysis. By consi...
This dissertation considers the estimation of the chance of misclassification when a new observation...
A technique for deriving asymptotic expansions for the variances of the errors of misclassification ...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
It is common to assume a normal distribution when discriminating and classifying a multivariate data...
This paper is a survey study on applications of boot- strap methods for estimating the probability o...
This thesis covers misclassification probabilities via an Edgeworth-type expansion of the maximum li...
The exact distribution of a classification function is often complicated to allow for easy numerical...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
We study the theoretical misclassication probability of linear and quadratic classiers and examine t...
This paper is a survey study on discriminant functions and their misclassification errors. Here we co...
Errors of misclassification and their probabilities are studied for classification problems associat...
An observation assumed to have come from one of two populations, (PI)(,1) and (PI)(,2), is to be cla...
This paper is a survey study on estimation of the pro- bability of misclassifications in two-groups d...
AbstractWe consider the problem of discriminating, on the basis of random “training” samples, betwee...
AbstractIn this paper some ideas on experimental designs are used in discriminant analysis. By consi...
This dissertation considers the estimation of the chance of misclassification when a new observation...
A technique for deriving asymptotic expansions for the variances of the errors of misclassification ...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
It is common to assume a normal distribution when discriminating and classifying a multivariate data...
This paper is a survey study on applications of boot- strap methods for estimating the probability o...