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Multivariate statistics / Machine learning / Dimension reduction / Multilinear algebra / Tensors / Multilinear principal-component analysis / Multilinear subspace learning / Principal component analysis / Nonlinear dimensionality reduction / Statistics / Algebra / Linear algebra
Date: 2010-07-28 07:26:26
Multivariate statistics
Machine learning
Dimension reduction
Multilinear algebra
Tensors
Multilinear principal-component analysis
Multilinear subspace learning
Principal component analysis
Nonlinear dimensionality reduction
Statistics
Algebra
Linear algebra

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