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Journal ArticleDOI

Improved linear programming models for discriminant analysis

Fred Glover
- 01 Dec 1990 - 
- Vol. 21, Iss: 4, pp 771-785
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TLDR
It is shown how to eliminate a previously undetected distortion and thereby increase the scope and flexibility of the LP discriminant analysis models, including the use of a successive goal method for establishing a series of conditional objectives to achieve improved discrimination.
Abstract
Discriminant analysis is an important tool for practical problem solving. Classical statistical applications have been joined recently by applications in the fields of management science and artificial intelligence. In a departure from the methodology of statistics, a series of proposals have appeared for capturing the goals of discriminant analysis in a collection of linear programming formulations. The evolution of these formulations has brought advances that have removed a number of initial shortcomings and deepened our understanding of how these models differ in essential ways from other familiar classes of LP formulations. We will demonstrate, however, that the full power of the LP discriminant analysis models has not been achieved, due to a previously undetected distortion that inhibits the quality of solutions generated. The purpose of this paper is to show how to eliminate this distortion and thereby increase the scope and flexibility of these models. We additionally show how these outcomes open the door to special model manipulations and simplifications, including the use of a successive goal method for establishing a series of conditional objectives to achieve improved discrimination.

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References
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Evaluating Program and Managerial Efficiency: An Application of Data Envelopment Analysis to Program Follow Through

TL;DR: A model for measuring the efficiency of Decision Making Units =DMU's is presented, along with related methods of implementation and interpretation, and suggests the additional possibility of new approaches obtained from PFT-NFT combinations which may be superior to either of them alone.
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Simple but powerful goal programming models for discriminant problems

TL;DR: In this paper, the authors suggest alternative assignment procedures, utilizing a set of interrelated goal programming formulations, and demonstrate the potential of these procedures to play a significant part in addressing the discriminant problem, and indicate fundamental ideas that lay the foundation for other sophisticated approaches.
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An experimental comparison of statistical and linear programming approaches to the discriminant problem

TL;DR: In this paper, the results of an experimental comparison of three linear programming approaches and the Fisher procedure for the discriminant problem were reported, and sample-based rules were suggested for selecting an approach based on Hotelling's T2 and Box's M statistics.
Journal ArticleDOI

A new class of models for the discriminant problem

TL;DR: A new model and a new class of normalizations are introduced that remedy both remaining limitations, making it possible to take advantage of the modeling capabilities of the LP formulations without the attendant shortcomings encountered by earlier investigations.
Journal ArticleDOI

Pattern recognition used to investigate multivariate data in analytical chemistry

TL;DR: The results of two recent studies are shown, a classification of subjects as normal or cystic fibrosis heterozygotes and simulation of chemical shifts of carbon-13 nuclear magnetic resonance spectra by linear model equations.
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