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Résultat majeur : DISTRIBUTED REASONING IN A PEER-TO-PEER SETTING: APPLICATION TO THE SEMANTIC WEB
DISTRIBUTED REASONING IN A PEER-TO-PEER SETTING: APPLICATION TO THE SEMANTIC WEB
01 janvier 2006

By Philippe Adjiman, Philippe Chatalic, François Goasdoué, Marie-Christine Rousset and Laurent Simon. Journal of Artificial Intelligence Research, Vol. 25, pages 269-314, 2
In a peer-to-peer inference system, each peer can reason locally but can also solicit some of its acquaintances, which are peers sharing part of its vocabulary. In this paper, we consider peer-to-peer inference systems in which the local theory of each peer is a set of propositional clauses defined upon a local vocabulary. An important characteristic of peer-to-peer inference systems is that the global theory (the union of all peer theories) is not known (as opposed to partition-based reasoning systems). The main contribution of this paper is to provide the first consequence finding algorithm in a peer-to-peer setting: it is anytime and computes consequences gradually from the solicited peer to peers that are more and more distant. We exhibit a sufficient condition on the acquaintance graph of the peer-to-peer inference system for guaranteeing the completeness of this algorithm. Another important contribution is to apply this general distributed reasoning setting to the setting of the Semantic Web through the somewhere semantic peer-to-peer data management system. The last contribution of this paper is to provide an experimental analysis of the scalability of the peer-to-peer infrastructure that we propose, on large networks of 1000 peers.



Activités de recherche
  ° Intelligence Artificielle
  ° Bases de données
  ° Représentation des connaissances
  ° Intégration d'informations
  ° Démonstration automatique
  ° Web sémantique
  ° Algorithmique répartie

Equipe
  ° Intelligence Artificielle et Systèmes d'Inférence

Contact
  ° CHATALIC Philippe
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