Federated Analytics: A survey
Elkordy, Ahmed Roushdy, Ezzeldin, Yahya H., Han, Shanshan, Sharma, Shantanu, He, Chaoyang, Mehrotra, Sharad, Avestimehr, Salman
–arXiv.org Artificial Intelligence
Federated analytics (FA) is a privacy-preserving framework for computing data analytics over multiple remote parties (e.g., mobile devices) or silo-ed institutional entities (e.g., hospitals, banks) without sharing the data among parties. Motivated by the practical use cases of federated analytics, we follow a systematic discussion on federated analytics in this article. In particular, we discuss the unique characteristics of federated analytics and how it differs from federated learning. We also explore a wide range of FA queries and discuss various existing solutions and potential use case applications for different FA queries.
arXiv.org Artificial Intelligence
Feb-2-2023
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