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Statistical classification / Singular value decomposition / Data analysis / Regression analysis / Linear discriminant analysis / Principal component analysis / Eigenvalues and eigenvectors / Covariance matrix / Multivariate normal distribution / Statistics / Algebra / Multivariate statistics
Date: 2009-02-17 12:13:25
Statistical classification
Singular value decomposition
Data analysis
Regression analysis
Linear discriminant analysis
Principal component analysis
Eigenvalues and eigenvectors
Covariance matrix
Multivariate normal distribution
Statistics
Algebra
Multivariate statistics

IAENG International Journal of Applied Mathematics, 39:1, IJAM_39_1_06 ______________________________________________________________________________________ Sparse Linear Discriminant Analysis with Applications to High

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