Mallet for Mac OS X 2.0.7

MALLET is a Java-based package for statistical natural language processing, document classification, clustering, topic modeling, information extraction, and other machine learning applications to text.

MALLET includes sophisticated tools for document classification: efficient routines for converting text to "features", a wide variety of algorithms (including Naïve Bayes, Maximum Entropy, and Decision Trees). ...

Author Andrew McCallum
License Freeware
Price FREE
Released 2012-03-03
Downloads 179
Filesize 11.80 MB
Requirements
Installation Instal And Uninstall
Keywords Java package, document classification, extract information, classification, document, tag
Users' rating
(2 rating)
Mallet for Mac OS XComponents & LibrariesMac OS X
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