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Information science / Statistical natural language processing / Natural language processing / Statistics / Machine learning / Information retrieval / Bayesian network / Probability distribution / Tfidf / Latent semantic analysis / Probabilistic latent semantic analysis
Date: 2016-03-15 09:55:59
Information science
Statistical natural language processing
Natural language processing
Statistics
Machine learning
Information retrieval
Bayesian network
Probability distribution
Tfidf
Latent semantic analysis
Probabilistic latent semantic analysis

Improving Information Retrieval with Textual Analysis: Bayesian Models and Beyond by Jaime B. Teevan Submitted to the Department of Electrical Engineering and Computer

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