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Semantically-enhanced information extraction

IEEE Aerospace Conference Proceedings, ISSN: 1095-323X, Page: 1-14
2011
  • 3
    Citations
  • 798
    Usage
  • 23
    Captures
  • 0
    Mentions
  • 0
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Metric Options:   Counts1 Year3 Year

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Conference Paper Description

Information Extraction using Natural Language Processing (NLP) produces entities along with some of the relationships that may exist among them. To be semantically useful, however, such discrete extractions must be put into context through some form of intelligent analysis. This paper offers a two-part architecture that employs the statistical methods of traditional NLP to extract discrete information elements in a relatively domain-agnostic manner, which are then injected into an inference-enabled environment where they can be semantically analyzed. Within this semantic environment, extractions are woven into the contextual fabric of a user-provided, domain-centric ontology where users together with user-provided logic can analyze these extractions within a more contextually complete picture. Our demonstration system infers the possibility of a terrorist plot by extracting key events and relationships from a collection of news articles and intelligence reports. © 2011 IEEE.

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