cogcomp-nlp - CogComp's Natural Language Processing libraries and Demos:

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This project collects a number of core libraries for Natural Language Processing (NLP) developed by Cognitive Computation Group. Each library contains detailed readme and instructions on how to use it. In addition the javadoc of the whole project is available here.

http://nlp.cogcomp.org/
https://github.com/CogComp/cogcomp-nlp


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