Supervised Linear Classification Performance Based on Marginal Probability for Two Groups

Okwonu, F. Z. (2014) Supervised Linear Classification Performance Based on Marginal Probability for Two Groups. British Journal of Mathematics & Computer Science, 5 (5). pp. 606-612. ISSN 22310851

[thumbnail of Okwonu552014BJMCS13449.pdf] Text
Okwonu552014BJMCS13449.pdf - Published Version

Download (203kB)

Abstract

The conventional technique to determine classification performance for the linear classification techniques strictly depends on the mean probabilities of correct classification or misclassification. Based on the mean probabilities of correct classification, robustness can be determined. In this paper, a new analytic procedure based on the joint and marginal probabilities is applied to determine robustness and the number of sample observations correctly classified. The classification results computed using this approach is unbiased. This technique is applied to investigate the classification performance of the Fisher linear classification analysis and the robust Fisher’s technique based on the minimum covariance determinant. The performance analysis when compared to the conventional procedure revealed that this technique is very informative. Relying on the analysis and the data set used, the recognition rate of the conventional approach is more accurate than the robust Fisher’s technique.

Item Type: Article
Subjects: GO STM Archive > Mathematical Science
Depositing User: Unnamed user with email support@gostmarchive.com
Date Deposited: 13 Jul 2023 04:17
Last Modified: 24 May 2024 06:22
URI: http://journal.openarchivescholar.com/id/eprint/1083

Actions (login required)

View Item
View Item