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Topic model / Tf*idf / Mixture model / Probabilistic latent semantic analysis / Latent semantic analysis / Multivariate Pólya distribution / Confidence interval / Dynamic topic model / Statistics / Statistical natural language processing / Latent Dirichlet allocation
Date: 2010-06-13 09:06:49
Topic model
Tf*idf
Mixture model
Probabilistic latent semantic analysis
Latent semantic analysis
Multivariate Pólya distribution
Confidence interval
Dynamic topic model
Statistics
Statistical natural language processing
Latent Dirichlet allocation

Spherical Topic Models Joseph Reisinger JOERAII @ CS . UTEXAS . EDU Austin Waters AUSTIN @ CS . UTEXAS . EDU

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