. La-corrélation-entre-la-qualité-d, une classification et celle de la recommandation à laquelle elle contribue. Nous envisageons aussi d'étudier comment enrichir un moteur de recommandation en prenant en compte de nouveaux types d'informations . La connectivité du réseau des « amis

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