Information extraction system

作者: Tracy D. Lemmond , Joseph Wendell Guensche , John J. Nitao , Nathan C. Perry , Ronald E. Glaser

DOI:

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摘要: An information extraction system and methods of operating the are provided. In particular, an for performing meta-extraction named entities people, organizations, locations as well relationships events from text documents described herein.

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