A combined SVM and LDA approach for classification

Published: Jan 5, 2006
Abstract
This paper describes a new large margin classifier, named SVM/LDA. This classifier can be viewed as an extension of support vector machine (SVM) by incorporating some global information about the data. The SVM/LDA classifier can be also seen as a generalization of linear discriminant analysis (LDA) by incorporating the idea of (local) margin maximization into standard LDA formulation. We show that existing SVM software can be used to solve the...
Paper Details
Title
A combined SVM and LDA approach for classification
Published Date
Jan 5, 2006
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