A general graph-based framework for top-N recommendation using content, temporal and trust information

6 May 2019Armel Jacques Nzekon Nzeko'oMaurice TchuenteMatthieu Latapy

Recommending appropriate items to users is crucial in many e-commerce platforms that contain implicit data as users' browsing, purchasing and streaming history. One common approach consists in selecting the N most relevant items to each user, for a given N, which is called top-N recommendation... (read more)

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