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Matrices / Functional analysis / Singular value decomposition / Data analysis / Principal component analysis / Kernel principal component analysis / Covariance matrix / Eigenvalues and eigenvectors / Diagonalizable matrix / Algebra / Mathematics / Linear algebra
Date: 2006-11-21 15:40:36
Matrices
Functional analysis
Singular value decomposition
Data analysis
Principal component analysis
Kernel principal component analysis
Covariance matrix
Eigenvalues and eigenvectors
Diagonalizable matrix
Algebra
Mathematics
Linear algebra

A Tutorial on Principal Component Analysis Jonathon Shlens∗ Systems

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Source URL: www.cs.cmu.edu

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