nous étendons à toute sémantique bien-formée un résultat donné dans ,
Montrons que X ? Y ? C(F s (r)) : Pour cela, il faut montrer que X ? Y respecte F s (r) i.e. soit V ? W ? F s (r), il faut montrer que ,
Cette suite est entièrement consacrée au traitement des données issues de biopuces : stockage, analyse des images, normalisation, analyse statistique et informatique des données... Le logiciel MeV est l'application consacrée à cette dernière étape, sa convivialité fait de cet outil, un des plus utilisés actuellement. La version étendue du logiciel MeV avec le module RG est disponible sur le site http ://www.isima.fr/agier/GeneRules. Les points-clés de ce module sont les suivants : ? Une interface conviviale ,
une nouvelle fenêtre s'ouvre permettant d'attribuer à chaque échantillon une classe et/ou un temps. Par exemple, pour la relation r 3 présentée dans la section 3.2, il faut ,
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