Dynamic brain effective connectivity analysis based on low-rank canonical polyadic decomposition: application to epilepsy
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Régine Le Bouquin-Jeannès | Ahmad Karfoul | Anca Nica | Pierre-Antoine Chantal | A. Karfoul | Anca Nica | R. Le Bouquin Jeannès | Pierre-Antoine Chantal
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