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Statistical classification / Generative model / Probabilistic latent semantic analysis / Latent Dirichlet allocation / Pattern recognition / Expectation–maximization algorithm / Supervised learning / Support vector machine / Grid plan / Statistics / Machine learning / Statistical natural language processing
Date: 2014-05-20 05:42:59
Statistical classification
Generative model
Probabilistic latent semantic analysis
Latent Dirichlet allocation
Pattern recognition
Expectation–maximization algorithm
Supervised learning
Support vector machine
Grid plan
Statistics
Machine learning
Statistical natural language processing

LNCS[removed]Exploiting Geometry in Counting Grids

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