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This project studies two Deep Learning approaches, aiming to learn representations using embeddings, as well as get more insights about users, by deploying a Recommender System. After wards, it will allow Modatta to provide users with personalized offers based on their interests. Choosing the right users is critical for the success of a campaign offer. Therefore, it’s necessary to identify a user-base making sure that ,not only marketers will target their offer for those that are going to accept the campaign, but also users will get the offers they need and desire.
Descrição
Palavras-chave
Machine learning Deep learning Recommender systems Hyperbolic embeddings Data monetization Customer targeting Personalized offers Business analysis
