On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods

This paper is centred on a binary classification problem in which it is desired to assign a new object with multivariate features to one of two distinct populations as based on historical sets of samples from two populations. A linear discriminant analysis framework has been proposed, called the min...

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Main Authors: Michael O. Olusola, Sidney I. Onyeagu
Format: Article
Language:English
Published: Wrocław University of Science and Technology 2020-01-01
Series:Operations Research and Decisions
Online Access:http://orduser.pwr.wroc.pl/DownloadFile.aspx?aid=1436
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spelling doaj-392dcaa67f5e4b7784043b95a798b1882021-04-26T21:03:38ZengWrocław University of Science and TechnologyOperations Research and Decisions2081-88582391-60602020-01-01vol. 30no. 1119130171595659On the Binary Classification Problem in Discriminant Analysis Using Linear Programming MethodsMichael O. Olusola0Sidney I. Onyeagu1Nnamdi Azikiwe University, Awka, NigeriaNnamdi Azikiwe University, Awka, NigeriaThis paper is centred on a binary classification problem in which it is desired to assign a new object with multivariate features to one of two distinct populations as based on historical sets of samples from two populations. A linear discriminant analysis framework has been proposed, called the minimised sum of deviations by proportion (MSDP) to model the binary classification problem. In the MSDP formulation, the sum of the proportion of exterior deviations is minimised subject to the group separation constraints, the normalisation constraint, the upper bound constraints on proportions of exterior deviations and the sign unrestriction vis-à-vis the non-negativity constraints. The two-phase method in linear programming is adopted as a solution technique to generate the discriminant function. The decision rule on group-membership prediction is constructed using the apparent error rate. The performance of the MSDP has been compared with some existing linear discriminant models using a previously published dataset on road casualties. The MSDP model was more promising and well suited for the imbalanced dataset on road casualties. (original abstract)http://orduser.pwr.wroc.pl/DownloadFile.aspx?aid=1436
collection DOAJ
language English
format Article
sources DOAJ
author Michael O. Olusola
Sidney I. Onyeagu
spellingShingle Michael O. Olusola
Sidney I. Onyeagu
On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods
Operations Research and Decisions
author_facet Michael O. Olusola
Sidney I. Onyeagu
author_sort Michael O. Olusola
title On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods
title_short On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods
title_full On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods
title_fullStr On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods
title_full_unstemmed On the Binary Classification Problem in Discriminant Analysis Using Linear Programming Methods
title_sort on the binary classification problem in discriminant analysis using linear programming methods
publisher Wrocław University of Science and Technology
series Operations Research and Decisions
issn 2081-8858
2391-6060
publishDate 2020-01-01
description This paper is centred on a binary classification problem in which it is desired to assign a new object with multivariate features to one of two distinct populations as based on historical sets of samples from two populations. A linear discriminant analysis framework has been proposed, called the minimised sum of deviations by proportion (MSDP) to model the binary classification problem. In the MSDP formulation, the sum of the proportion of exterior deviations is minimised subject to the group separation constraints, the normalisation constraint, the upper bound constraints on proportions of exterior deviations and the sign unrestriction vis-à-vis the non-negativity constraints. The two-phase method in linear programming is adopted as a solution technique to generate the discriminant function. The decision rule on group-membership prediction is constructed using the apparent error rate. The performance of the MSDP has been compared with some existing linear discriminant models using a previously published dataset on road casualties. The MSDP model was more promising and well suited for the imbalanced dataset on road casualties. (original abstract)
url http://orduser.pwr.wroc.pl/DownloadFile.aspx?aid=1436
work_keys_str_mv AT michaeloolusola onthebinaryclassificationproblemindiscriminantanalysisusinglinearprogrammingmethods
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