Removed Sets Fusion: Performing Off The Shelf

  • Authors:
  • Julien Hué;Eric Würbel;Odile Papini

  • Affiliations:
  • LSIS UMR CNRS 6168-Équipe INCA Université de Toulon et du Var Avenue de l'Université-BP20132 83957 LA GARDE CEDEX-FRANCE, hue, wurbel@univ-tln.fr;LSIS UMR CNRS 6168-Équipe INCA Université de Toulon et du Var Avenue de l'Université-BP20132 83957 LA GARDE CEDEX-FRANCE, hue, wurbel@univ-tln.fr;LSIS UMR CNRS 6168-Équipe INCA Université de la Méditerranée-ESIL Avenue de Luminy 13288 MARSEILLE CEDEX-FRANCE, odile.papini@esil.univmed.fr

  • Venue:
  • Proceedings of the 2008 conference on ECAI 2008: 18th European Conference on Artificial Intelligence
  • Year:
  • 2008

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Abstract

Merging multiple sources of information is a rising subject in artificial intelligence. Most of the proposals are model-based approaches with very high computational complexity, moreover few experimentations are available. This paper proposes a framework for performing Removed Sets Fusion (RSF) of belief bases consisting of prepositional formulae. It then describes the implementation of RSF which stems from Answer Set Programming (ASP) and can be performed with any ASP solver supporting the minimize statement. It finally presents an experimental study and a comparison.