. .. Introduction, 84 6.2 Description du cas d'étude Tamagotchi

A. .. De-la-méthode-au-cas-d'étude-tamagotchi, 93 6.3.1 Formalisation de l'approche proposée

. .. , Impact des activités sur l'évolution des critères, p.98

.. .. Bilan,

.. .. Conclusion,

. .. Synthèse-des-travaux,

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