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Multivariate statistics / Statistics / Machine learning / Learning / Statistical classification / Dimension reduction / Linear algebra / Non-negative matrix factorization / Support vector machine / Kernel principal component analysis / Principal component analysis / Nonlinear dimensionality reduction
Date: 2008-12-14 08:36:37
Multivariate statistics
Statistics
Machine learning
Learning
Statistical classification
Dimension reduction
Linear algebra
Non-negative matrix factorization
Support vector machine
Kernel principal component analysis
Principal component analysis
Nonlinear dimensionality reduction

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