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Chapter

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Title

Knowledge-based highly-specialized terrorist event extraction

Authors

[ 1 ] Instytut Automatyki i Inżynierii Informatycznej, Wydział Elektryczny, Politechnika Poznańska | [ P ] employee

Year of publication

2013

Chapter type

paper

Publication language

english

Keywords
EN
  • knowledge-based information extraction
  • semantic roles
  • terrorist event discovery
Abstract

EN In this paper we present a prototype of a system aimed at event extraction using linguistic patterns with semantic classes. The process is aided with an auxiliary tool for mapping verb statistics across messages. The sentence analyzer uses linguistic associations, based on VerbNet across the message and between messages' sentences to select semantic role fillers. We restrict ourselves to the coverage of one event type only – namely a kidnapping – and to two events template slots (semantic roles): a perpetrator and a person_target (a human target). We designed rules involving semantic role filling using previous works on coreference. We used the Sundance parser and AutoSlog extraction patterns generator. Then we applied the semantic role filler and event resolution tool SRL Master. Our approach yields high perform-ance on the MUC-4 data set.

Pages (from - to)

1 - 13

Book

Proceedings of the 7th International Rule Challenge, the Special Track on Human Language Technology and the 3rd RuleML Doctoral Consortium

Presented on

7th International Rule Challenge, the Special Track on Human Language Technology, 11-13.07.2013, Seattle,USA, United States

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