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Journal article

Sparse discriminant analysis

From

DTU Data Analysis, Department of Informatics and Mathematical Modeling, Technical University of Denmark1

Department of Informatics and Mathematical Modeling, Technical University of Denmark2

Stanford University3

University of Washington4

We consider the problem of performing interpretable classification in the high-dimensional setting, in which the number of features is very large and the number of observations is limited. This setting has been studied extensively in the chemometrics literature, and more recently has become commonplace in biological and medical applications.

In this setting, a traditional approach involves performing feature selection before classification. We propose sparse discriminant analysis, a method for performing linear discriminant analysis with a sparseness criterion imposed such that classification and feature selection are performed simultaneously.

Sparse discriminant analysis is based on the optimal scoring interpretation of linear discriminant analysis, and can be extended to perform sparse discrimination via mixtures of Gaussians if boundaries between classes are nonlinear or if subgroups are present within each class. Our proposal also provides low-dimensional views of the discriminative directions. © 2011 American Statistical Association and the American Society for Qualitys.

Language: English
Publisher: Taylor & Francis
Year: 2011
Pages: 406-413
ISSN: 15372723 and 00401706
Types: Journal article
DOI: 10.1198/TECH.2011.08118
ORCIDs: Clemmensen, Line Katrine Harder and Ersbøll, Bjarne Kjær

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