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Linear algebra / Multivariate statistics / Data analysis / Matrix theory / Singular value decomposition / Vector space model / Principal component analysis / Cluster analysis / Hidden Markov model / Algebra / Statistics / Mathematics
Date: 2014-08-25 17:40:07
Linear algebra
Multivariate statistics
Data analysis
Matrix theory
Singular value decomposition
Vector space model
Principal component analysis
Cluster analysis
Hidden Markov model
Algebra
Statistics
Mathematics

Foundations of Data Science 1 John Hopcroft Ravindran Kannan

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Source URL: research.microsoft.com

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