, Outre quef n,? converge vers f ? , nous observons que l'estimateur retrouve les modes de la fonction f ? , même en présence d'un nombre restreint d'observations. Ceci présente un intêrét dans les applications de spectrométrie ?, car permet d'identifier les pics caractéristiques d'un radionucléide donné

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