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Federated Recommendation System via Differential Privacy (2005.06670v2)
Published 14 May 2020 in cs.LG, cs.IT, and math.IT
Abstract: In this paper, we are interested in what we term the federated private bandits framework, that combines differential privacy with multi-agent bandit learning. We explore how differential privacy based Upper Confidence Bound (UCB) methods can be applied to multi-agent environments, and in particular to federated learning environments both in master-worker' and
fully decentralized' settings. We provide a theoretical analysis on the privacy and regret performance of the proposed methods and explore the tradeoffs between these two.
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