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Mathematics / Statistics / Dimension reduction / Topology / Multivariate statistics / Computational statistics / Machine learning / Dimension / Nonlinear dimensionality reduction / Isomap / Semidefinite embedding / Embedding
Date: 2011-01-19 19:25:19
Mathematics
Statistics
Dimension reduction
Topology
Multivariate statistics
Computational statistics
Machine learning
Dimension
Nonlinear dimensionality reduction
Isomap
Semidefinite embedding
Embedding

Unsupervised Image Embedding Using Nonparametric Statistics Guobiao Mei University of California, Riverside Abstract

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