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Computational statistics / Statistical classification / Document classification / Classifier / Feature selection / Random subspace method / Naive Bayes classifier / Statistics / Machine learning / Artificial intelligence
Date: 2008-08-28 10:03:24
Computational statistics
Statistical classification
Document classification
Classifier
Feature selection
Random subspace method
Naive Bayes classifier
Statistics
Machine learning
Artificial intelligence

Classifying Documents using Ruby Paul Dix http://www.pauldix.net

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