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Neural networks / Multivariate statistics / Singular value decomposition / Abstract algebra / Linear algebra / Generative topographic map / Expectation–maximization algorithm / Principal component analysis / Mixture model / Statistics / Algebra / Mathematics
Date: 2002-09-13 13:19:13
Neural networks
Multivariate statistics
Singular value decomposition
Abstract algebra
Linear algebra
Generative topographic map
Expectation–maximization algorithm
Principal component analysis
Mixture model
Statistics
Algebra
Mathematics

GTM: The Generative Topographic Mapping Christopher M. Bishop,

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