Explained Variation in Dynamic Network Models

نویسنده

  • Tom A.B. SNIJDERS
چکیده

résumé – Une mesure de la part de variation expliquée par les modèles dynamiques de réseau On propose une mesure de la part de variation expliquée par un modèle stochastique de la dynamique des réseaux sociaux complets. Cette mesure est fondée sur l’entropie de la distribution des choix faits par les acteurs au cours du processus d’évolution du réseau. Elle a pour but d’aider à effectuer une meilleure interprétation et à sélectionner une spécification appropriée dans l’application des modèles statistiques s’appliquant aux données longitudinales concernant des relations. mots clés – Réseau complet, Dynamique, Analyse longitudinale, Variation expliquée, Coefficient de Détermination, Entropie.

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تاریخ انتشار 2004