Mise en œuvre de l'algorithme EM pour l'estimation d'un modèle linéaire généralisé multinomial à effets aléatoires
Goulard, Michel
Revue de Statistique Appliquée, Tome 49 (2001), p. 29-52 / Harvested from Numdam
Publié le : 2001-01-01
@article{RSA_2001__49_4_29_0,
     author = {Goulard, Michel},
     title = {Mise en \oe uvre de l'algorithme EM pour l'estimation d'un mod\`ele lin\'eaire g\'en\'eralis\'e multinomial \`a effets al\'eatoires},
     journal = {Revue de Statistique Appliqu\'ee},
     volume = {49},
     year = {2001},
     pages = {29-52},
     language = {fr},
     url = {http://dml.mathdoc.fr/item/RSA_2001__49_4_29_0}
}
Goulard, Michel. Mise en œuvre de l'algorithme EM pour l'estimation d'un modèle linéaire généralisé multinomial à effets aléatoires. Revue de Statistique Appliquée, Tome 49 (2001) pp. 29-52. http://gdmltest.u-ga.fr/item/RSA_2001__49_4_29_0/

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