A CLP-based, diagnosticity-driven system for concept combinations

  • Authors:
  • Georgios Tagalakis;Daniela Ferrari;Mark T. Keane

  • Affiliations:
  • University College Dublin, Department of Computer Science, Dublin 4, Ireland;University of Siena, Department of Philosophy and Social Sciences, Siena, Italy;University College Dublin, Department of Computer Science, Dublin 4, Ireland

  • Venue:
  • IJCAI'05 Proceedings of the 19th international joint conference on Artificial intelligence
  • Year:
  • 2005

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Abstract

Diagnosticity operates as an important selection criterion for several computational models of concept combination. Unfortunately, it has not been clear how the diagnosticity of property and relational predicates of the concepts combined can be formalized and quantified. Using an information retrieval method we compute, in a uniform manner, diagnosticity values of concepts predicates. We go on to present a reasoning system that attempts to create meaningful interpretations of novel noun noun combinations. The system is based solely on diagnostic predicates values and a set of constraint satisfaction rules. We show the effectiveness and plausibility of our methods and discuss their potential.