, Une autre perspective serait d'étudier l'influence de l'échantillonage pour pouvoir augmenter la durée de l'expérience et permettre ainsi d'avoir plus d'instants de synchronisation pour pouvoir mieux analyser quelle influence cela a sur les délais d'intersauts

, Pour analyser de manière plus précise ces délais d'intersauts, nous pourrions utiliser des tests d'adéquation afin de vérifier s'ils reflètent des phénomènes non expliqués par le modèle

, De plus, nous pourrions analyser les différences de modifications de ces délais après un instant de synchronisation. Cela pourrait justifier enfin une étude spatiale du réseau, certains neurones pouvant être plus ou moins éloignés de ceux qui se synchronisent, Ceci serait possible en analysant directement les films biologiques correspondants aux expériences

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