This study examined the error of classification associated with the gamma distribution for the linear discriminant analysis, the logistic discriminant analysis and the quadratic discriminant analysis. Data were simulated data from Gamma distribution for sample size 10, 20, 30, 40, 50, 60, 70, 80, 90, and 100. Fifty simulation for each of the sample size was performed for the methods considered in this study. The findings of the study revealed that for the gamma distribution, the logistic discriminant analysis method performed better followed by the linear discriminant analysis and then the quadratic discriminant analysis. This is because the logistic discriminant analysis method has the least average misclassification error rate across the ...
Gamma and log-logistic distributions are two popular distributions for analyzing lifetime data. In t...
This study compares the classification accuracy of linear discriminant analysis (LDA), quadratic dis...
Discriminant analysis predicts or classifies observations or subjects into mutually exclusive groups...
This study provides a comprehensive review of the literature pertaining to the problem of classifica...
The performance of four discriminant analysis procedures for the classification of observations from...
AbstractIn this paper an expansion for the variance of the error rate of a classification rule is de...
In this paper we show the results of a comparison simulation study for three classification techniqu...
This thesis compares the performance and robustness of five different varities of discriminant analy...
peer reviewedA simulation study has been used to evaluate the minimal error rate of three affectatio...
This thesis compares the performance and robustness of five different varities of discriminant analy...
AbstractThis article presents simulation results comparing various resampling estimators of classifi...
Two of the most widely used statistical methods for analyzing categorical outcome variables are line...
A study of comparison between non-metric discriminant analysis and logistic regression when the clas...
A comparison of the error probabilities for various discriminating rules is performed in the two pop...
Historically, logistic regression has been the standard for binary response classification in biomet...
Gamma and log-logistic distributions are two popular distributions for analyzing lifetime data. In t...
This study compares the classification accuracy of linear discriminant analysis (LDA), quadratic dis...
Discriminant analysis predicts or classifies observations or subjects into mutually exclusive groups...
This study provides a comprehensive review of the literature pertaining to the problem of classifica...
The performance of four discriminant analysis procedures for the classification of observations from...
AbstractIn this paper an expansion for the variance of the error rate of a classification rule is de...
In this paper we show the results of a comparison simulation study for three classification techniqu...
This thesis compares the performance and robustness of five different varities of discriminant analy...
peer reviewedA simulation study has been used to evaluate the minimal error rate of three affectatio...
This thesis compares the performance and robustness of five different varities of discriminant analy...
AbstractThis article presents simulation results comparing various resampling estimators of classifi...
Two of the most widely used statistical methods for analyzing categorical outcome variables are line...
A study of comparison between non-metric discriminant analysis and logistic regression when the clas...
A comparison of the error probabilities for various discriminating rules is performed in the two pop...
Historically, logistic regression has been the standard for binary response classification in biomet...
Gamma and log-logistic distributions are two popular distributions for analyzing lifetime data. In t...
This study compares the classification accuracy of linear discriminant analysis (LDA), quadratic dis...
Discriminant analysis predicts or classifies observations or subjects into mutually exclusive groups...