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Information-Theoretic Bounds on the Generalization Error and Privacy Leakage in Federated Learning

机译:联合学习中泛化错误和隐私泄漏的信息理论界

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Machine learning algorithms operating on mobile networks can be characterized into three different categories. First is the classical situation in which the end-user devices send their data to a central server where this data is used to train a model. Second is the distributed setting in which each device trains its own model and send its model parameters to a central server where these model parameters are aggregated to create one final model. Third is the federated learning setting in which, at any given time t, a certain number of active end users train with their own local data along with feedback provided by the central server and then send their newly estimated model parameters to the central server. The server, then, aggregates these new parameters, updates its own model, and feeds the updated parameters back to all the end users, continuing this process until it converges.The main objective of this work is to provide an information-theoretic framework for all of the aforementioned learning paradigms. Moreover, using the provided framework, we develop upper and lower bounds on the generalization error together with bounds on the privacy leakage in the classical, distributed and federated learning settings.
机译:在移动网络上运行的机器学习算法可以分为三类。首先是经典情况,在这种情况下,最终用户设备将其数据发送到中央服务器,在该服务器中,该数据用于训练模型。其次是分布式设置,其中每个设备训练自己的模型并将其模型参数发送到中央服务器,在中央服务器中,这些模型参数被汇总以创建一个最终模型。第三是联合学习设置,其中,在任何给定的时间t,一定数量的活动最终用户将使用自己的本地数据以及中央服务器提供的反馈进行训练,然后将其新估计的模型参数发送到中央服务器。然后,服务器聚合这些新参数,更新其自己的模型,并将更新后的参数反馈给所有最终用户,继续此过程直至收敛。这项工作的主要目的是为所有用户提供一个信息理论框架。前面提到的学习范式。此外,使用提供的框架,我们可以在经典,分布式和联合学习设置中,对泛化误差的上限和下限以及隐私泄漏的范围进行开发。

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