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Information retrieval / Computational linguistics / Matrix theory / Singular value decomposition / Principal component analysis / Word-sense disambiguation / Eigenvalues and eigenvectors / Natural language processing / Part-of-speech tagging / Algebra / Linear algebra / Mathematics
Date: 2012-06-07 13:20:26
Information retrieval
Computational linguistics
Matrix theory
Singular value decomposition
Principal component analysis
Word-sense disambiguation
Eigenvalues and eigenvectors
Natural language processing
Part-of-speech tagging
Algebra
Linear algebra
Mathematics

Two Step CCA: A new spectral method for estimating vector models of words Paramveer S. Dhillon [removed] Computer & Information Science, University of Pennsylvania, Philadelphia, PA[removed]U.S.A Jordan Rodu

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