Comments on "Federated Learning with Differential Privacy: Algorithms and Performance Analysis"

Mahtab Talaei, Iman Izadi
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Abstract

In the paper by Wei et al. ("Federated Learning with Differential Privacy: Algorithms and Performance Analysis"), the convergence performance of the proposed differential privacy algorithm in federated learning (FL), known as Noising before Model Aggregation FL (NbAFL), was studied. However, the presented convergence upper bound of NbAFL (Theorem 2) is incorrect. This comment aims to present the correct form of the convergence upper bound for NbAFL.
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关于 "具有差异隐私的联合学习:算法和性能分析"
在 Wei 等人的论文(《具有差分隐私的联合学习:算法与性能分析》)中,研究了联合学习(FL)中的差分隐私算法(即模型聚合前噪声联合学习算法(NbAFL))的收敛性能。然而,NbAFL 的收敛上限(定理 2)并不正确。本评论旨在提出 NbAFL 收敛上界的正确形式。
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