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Multivariate statistics / Dimension reduction / Computational statistics / Machine learning / Isomap / Dimensionality reduction / Nonlinear dimensionality reduction / Semidefinite embedding / Principal component analysis / Tensor / Manifold / Multidimensional scaling
Date: 2010-02-04 17:27:11
Multivariate statistics
Dimension reduction
Computational statistics
Machine learning
Isomap
Dimensionality reduction
Nonlinear dimensionality reduction
Semidefinite embedding
Principal component analysis
Tensor
Manifold
Multidimensional scaling

Journal of Machine Learning Research450 Submitted 11/07; Revised 11/09; Published 1/10 Dimensionality Estimation, Manifold Learning and Function Approximation using Tensor Voting

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