Django - theta-subsumption test for Relational Learning
Date de dernière version : 01 juin 2005
Responsable :
SEBAG Michèle
Supervised learning intensively relies on the so-called covering test, checking whether a hypothesis covers an example. As the covering test is intensively used during the course of learning, its implementation must be efficient.
In Relational Learning and Inductive Logic Programming, the most commonly used test is the theta-subsumption defined by Plotkin. Based on reformulating theta-subsumption as a binary constraint satisfaction problem (CSP), the Django algorithm combines well-known CSP procedures and theta-subsumption specific data structures. The computational gain is about two orders of magnitude on the previous theta-subsumption algorithms.
Django has been devised by Jérôme Maloberti during his PhD under Michele Sebag's supervision. Why this name ? Because it's fast ! and because Jérôme is a Django Reinhardt's fan :-)
Pour en savoir plus: http://tao.lri.fr/tiki-index.php?page=Django
Logiciel - Licence :
GPL
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Apprentissage
Membres
SEBAG Michèle
Equipe Apprentissage et OptimisationEquipe-projet Inria TAO