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Résultat majeur : DISTRIBUTED TREE DECOMPOSITION WITH PRIVACY |
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DISTRIBUTED TREE DECOMPOSITION WITH PRIVACY
29 juin 2012
Vincent Armant, Laurent Simon and Philippe Dague in 18th International Conference on Principles and Practice of Constraint Programming
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Tree Decomposition of Graphical Models is a well known method for mapping a graph into a tree, that is commonly used to speed up solving many problems in Graph theory, Constraints optimization, Planning, Databases, Knowledge Representation, ...
However, in a distributed case, one may have to respect the privacy rules (a subset of variables may have to be kept secret in a peer), and the initial network architecture (no link can be dynamically added). In this context, we propose a new distributed method, based on token passing and local elections, that shows performances (in the jointree quality) close to the state of the art Bucket Elimination in a centralized case ie when used without these two restrictions). Until now, the state of the art in distributed context was using a Depth-First traversal with a clever heuristic. It is outperformed by our method on two families of problems sharing the small-world property.
Activités de recherche
° Compilation de bases de connaissances ° Algorithmique répartie ° Optimisation ° Algorithmique de graphes ° Pair à Pair
Equipe
° Intelligence Artificielle et Systèmes d'Inférence
Contact
[aucun]
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