Differentially Private Auction for Federated Learning with Non-IID Data

Kean Ren
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Abstract

With the increase in clients’ concerns about their privacy, federated learning, as a new model of machine learning process, was proposed to help people complete learning tasks on the basis of privacy protection. But the large-scale application of federated learning depends on the extensive participation of individual clients. This motivates the incentive mechanism design to increase clients’ willingness to participate. However, the incentive mechanism should take into account non-IID issues and privacy protection of clients’ sensitive information of data distribution. These two aspects are not well studied jointly in the existing incentive mechanism design. In this paper, we propose a differentially private auction for federated learning with non-IID data. It can not only protect clients’ private information of data distribution with differential privacy but also incentivize clients with suitable data distribution to deal with non-IID issues. Finally, we prove that the designed mechanism meets the design objective through detailed theoretical analysis.
基于非iid数据的联邦学习差分私有拍卖
随着客户对其隐私的关注日益增加,联邦学习作为一种新的机器学习过程模型被提出,以帮助人们在隐私保护的基础上完成学习任务。但是联邦学习的大规模应用依赖于个体客户的广泛参与。这就激发了激励机制的设计,以增加客户的参与意愿。但是,激励机制应考虑数据分发中客户敏感信息的非iid问题和隐私保护。在现有的激励机制设计中,这两个方面没有得到很好的综合研究。在本文中,我们提出了一种用于非iid数据的联邦学习的差分私有拍卖。它既能以差分隐私保护数据分布的客户私有信息,又能激励数据分布合适的客户处理非iid问题。最后,通过详细的理论分析,证明所设计的机构符合设计目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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