Mathematical programming models for piecewise-linear discriminant analysis

Mathematical programming models for piecewise-linear discriminant analysis

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Article ID: iaor20062308
Country: United Kingdom
Volume: 56
Issue: 3
Start Page Number: 331
End Page Number: 341
Publication Date: Mar 2005
Journal: Journal of the Operational Research Society
Authors:
Keywords: statistics: multivariate
Abstract:

Mathematical programming (MP) discriminant analysis models are widely used to generate linear discriminant functions that can be adopted as classification models. Nonlinear classication models may have better classification performance than linear classifiers, but although MP methods can be used to generate nonlinear discriminant functions, functions of specified form must be evaluated separately. Piecewise-linear functions can approximate nonlinear functions, and two new MP methods for generating piecewise-linear discriminant functions are developed in this paper. The first method uses maximization of classification accuracy (MCA) as the objective, while the second uses an approach based on minimization of the sum of deviations (MSD). The use of these new MP models is illustrated in an application to a test problem and the results are compared with those from standard MCA and MSD models.

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