THE JOHNS HOPKINS UNIVERSITY Nerit: Named Entity Recognition for Informal Text

نویسندگان

  • David Etter
  • Francis Ferraro
  • Ryan Cotterell
  • Olivia Buzek
  • Benjamin Van Durme
چکیده

We describe a multilingual named entity recognition system using language independent feature templates, designed for processing short, informal media arising from Twitter and other microblogging services. We crowdsource the annotation of tens of thousands of English and Spanish tweets and present classification results on this resource.

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تاریخ انتشار 2012