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. Tsopra, prenant en compte les domaines hétérogènes, les attributs n-aires et les valeurs manquantes. Nous avons montré comment cette approche permettait de mieux comprendre le raisonnement des experts en infectiologie. Les perspectives de ce travail incluent l'application de la méthode à d'autres ontologies dans le domaine médical ou au-delà, ainsi que la visualisation du modèle de préférences appris en antibiothérapie et son utilisation pour l'aide à la décision thérapeutique auprès des médecins généralistes, Conclusion Nous avons proposé une méthode générale pour l'apprentissage de préférences à partir d'une ontologie formelle, 2019.

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