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Dimension / Nonlinear dimensionality reduction / Computational statistics / Isomap / Manifold / Principal component analysis / K-nearest neighbor algorithm / Semidefinite embedding / Manifold alignment / Statistics / Multivariate statistics / Dimension reduction
Date: 2008-04-17 18:40:11
Dimension
Nonlinear dimensionality reduction
Computational statistics
Isomap
Manifold
Principal component analysis
K-nearest neighbor algorithm
Semidefinite embedding
Manifold alignment
Statistics
Multivariate statistics
Dimension reduction

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