Generating natural language summaries from multiple on-line sources

  • Authors:
  • Dragomir R. Radev;Kathleen R. McKeown

  • Affiliations:
  • Columbia University;Columbia University

  • Venue:
  • Computational Linguistics - Special issue on natural language generation
  • Year:
  • 1998

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Abstract

We present a methodology for summarization of news about current events in the form of briefings that include appropriate background (historical) information. The system that we developed, SUMMONS, uses the output of systems developed for the DARPA Message Understanding Conferences to generate summaries of multiple documents on the same or related events, presenting similarities and differences, contradictions, and generalizations among sources of information. We describe the various components of the system, showing how information from multiple articles is combined, organized into a paragraph, and finally, realized as English sentences. A feature of our work is the extraction of descriptions of entities such as people and places for reuse to enhance a briefing.