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Algebra / Statistics / Mathematics / Covariance and correlation / Matrices / Multivariate statistics / Algebra of random variables / Covariance / Matrix / Principal component analysis / Multivariate normal distribution / Eigenvalues and eigenvectors
Date: 2011-01-31 07:49:36
Algebra
Statistics
Mathematics
Covariance and correlation
Matrices
Multivariate statistics
Algebra of random variables
Covariance
Matrix
Principal component analysis
Multivariate normal distribution
Eigenvalues and eigenvectors

O R I G I NA L A RT I C L E doi:j00587.x THE ONTOGENETIC TRAJECTORY OF THE PHENOTYPIC COVARIANCE MATRIX, WITH EXAMPLES FROM CRANIOFACIAL SHAPE IN

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