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, annexe Liste des outils étudiés dans la partie 3

. Abstract-;-georgeon, DisKit (DIScovering Knowledge from Interaction Traces) (LIRIS) : [Fuchs, Contextualized Attention Metadata (Fraunhofer FIT, vol.3, p.4, 1997.

, Méthodes statistiques d'appariement optimal -analyse de séquences

;. Nsdl-paradata and . Niemann, Samotraces (LIRIS) : le projet SAMOTRACES, 2012.

(. Taaabs and . Liris, Site du projet TAAABS

;. Transmute and . Barazzutti, Tatiana (ICAR), 2010.

. Utl-(lium-;-loup, Iksal, 2011.