Extensions et applications de l'algorithme SAEM pour les modèles mixtes
Thèses d'Orsay, no. 714 (2006) , 152 p.
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     title = {Extensions et applications de l'algorithme {SAEM} pour les mod\`eles mixtes},
     series = {Th\`eses d'Orsay},
     publisher = {Universite Paris-Sud Facult\'e des Sciences d'Orsay},
     number = {714},
     year = {2006},
     language = {fr},
     url = {http://archive.numdam.org/item/BJHTUP11_2006__0714__A1_0/}
}
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Meza, Cristian. Extensions et applications de l'algorithme SAEM pour les modèles mixtes. Thèses d'Orsay, no. 714 (2006), 152 p. http://numdam.org/item/BJHTUP11_2006__0714__A1_0/

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