.. Il-s-'agit-du-modèle-?cdm-de-gibbs, Il postule notamment que l'Univers est homogène à grande échelle, que la relativité générale s'applique et que l'Univers est en expansion accélérée. Le lecteur pourra se reporter à [Liddle, 2015] pour une introduction aux principes cosmologiques correspondants. Annexes 153 A Algorithmes pour les modèles de champs de Markov A.1 Échantillonneur, p.156

C. Est-estimée-par-un-Échantillonneur-de-gibbs, donc le principe est reporté dans l'algorithme 2. Les valeurs initiales (x 0 , v 0 ) peuvent être choisies « proches » d'une solution souhaitée peut permettre une convergence plus rapide. En l'absence de telles informations

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