2023
DOI: 10.1007/s41060-023-00442-4
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Recent advances and future challenges in federated recommender systems

Marko Harasic,
Felix-Sebastian Keese,
Denny Mattern
et al.

Abstract: Recommender systems are an integral part of modern-day user experience. They understand their preferences and support them in discovering meaningful content by creating personalized recommendations. With governmental regulations and growing users’ privacy awareness, capturing the required data is a challenging task today. Federated learning is a novel approach for distributed machine learning, which keeps users’ privacy in mind. In federated learning, the participating peers train a global model together, but … Show more

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