No Noun Phrase Left Behind: Detecting and Typing Unlinkable Entities

  title={No Noun Phrase Left Behind: Detecting and Typing Unlinkable Entities},
  author={Thomas Lin and Mausam and Oren Etzioni},
Entity linking systems link noun-phrase mentions in text to their corresponding Wikipedia articles. However, NLP applications would gain from the ability to detect and type all entities mentioned in text, including the long tail of entities not prominent enough to have their own Wikipedia articles. In this paper we show that once the Wikipedia entities mentioned in a corpus of textual assertions are linked, this can further enable the detection and fine-grained typing of the unlinkable entities… CONTINUE READING
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