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Matrix theory / Singular value decomposition / Data analysis / Multivariate statistics / Matrices / Eigenvalues and eigenvectors / Principal component analysis / Covariance matrix / Matrix / Algebra / Linear algebra / Mathematics
Date: 2009-11-08 19:20:38
Matrix theory
Singular value decomposition
Data analysis
Multivariate statistics
Matrices
Eigenvalues and eigenvectors
Principal component analysis
Covariance matrix
Matrix
Algebra
Linear algebra
Mathematics

High-dimensional analysis of semidefinite relaxations for sparse principal components

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Source URL: www.eecs.berkeley.edu

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