Mathematical Programming Approaches to Classification Problems
Author(s) -
Soulef Smaoui,
Habib Chabchoub,
Belaı̈d Aouni
Publication year - 2009
Publication title -
advances in operations research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.379
H-Index - 14
eISSN - 1687-9155
pISSN - 1687-9147
DOI - 10.1155/2009/252989
Subject(s) - linear discriminant analysis , computer science , discriminant , flexibility (engineering) , machine learning , support vector machine , context (archaeology) , artificial intelligence , mathematical optimization , covariance , goal programming , process (computing) , mathematics , statistics , paleontology , biology , operating system
Discriminant Analysis (DA) is widely applied in many fields. Some recent researches raise the fact that standard DA assumptions, such as a normal distribution of data and equality of the variance-covariance matrices, are not always satisfied. A Mathematical Programming approach (MP) has been frequently used in DA and can be considered a valuable alternative to the classical models of DA. The MP approach provides more flexibility for the process of analysis. The aim of this paper is to address a comparative study in which we analyze the performance of three statistical and some MP methods using linear and nonlinear discriminant functions in two-group classification problems. New classification procedures will be adapted to context of nonlinear discriminant functions. Different applications are used to compare these methods including the Support Vector Machines- (SVMs-) based approach. The findings of this study will be useful in assisting decision-makers to choose the most appropriate model for their decision-making situation.
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