Abstractive Summarization of Voice Communications

نویسندگان

  • Vincenzo Pallotta
  • Rodolfo Delmonte
  • Antonella Bristot
چکیده

ive Summarization of Voice Communications Vincenzo Pallotta 1 , Rodolfo Delmonte 2 , Antonella Bristot 2 Department of Computer Science Webster University, Geneva Route de Collex 15 CH-1293 Bellevue, Switzerland [email protected] Department of Language Science Università “Ca Foscari” 30123 – Venezia, Italy [email protected] Abstract Abstract summarization of conversations is a very challenging task that requires full understanding of the dialog turns, their roles and relationships in the conversations. We present an efficient system, derived from a full-fledged text analysis system, that performs the necessary linguistic analysis of turns in conversations and provides useful argumentative labels to build synthetic abstractive summaries.Abstract summarization of conversations is a very challenging task that requires full understanding of the dialog turns, their roles and relationships in the conversations. We present an efficient system, derived from a full-fledged text analysis system, that performs the necessary linguistic analysis of turns in conversations and provides useful argumentative labels to build synthetic abstractive summaries.

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تاریخ انتشار 2009