Robust Federated Learning Under Worst-Case Model

F. Ang, Li Chen, Weidong Wang
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引用次数: 3

Abstract

Federated learning provides a communication- efficient training process via alternating between local training and averaging updated local model. Nevertheless, it requires perfectly acquisition of the model which is hard to achieve in wireless communication practically, and the noise will cause serious effect on federated learning. To tackle this challenge, we propose a robust design for federated learning to decline the effect of noise. Considering the noise in communication steps, we first formulate the problem as the parallel optimization for each node under worst-case model. We utilize the sampling-based successive convex approximation algorithm to develop a feasible training scheme, due to the unavailable maxima noise condition and non-convex issue of the objective function. In addition, the convergence rate of proposed design are analyzed from a theoretical point of view. Finally, the prediction accuracy improvement and loss function value reduction of the proposed design are demonstrated via simulation.
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最坏情况下的鲁棒联邦学习
联邦学习通过在局部训练和平均更新的局部模型之间交替进行,提供了一种高效的训练过程。然而,它需要完美的获取模型,这在无线通信中很难实现,并且噪声会对联邦学习造成严重的影响。为了应对这一挑战,我们提出了一种强大的联邦学习设计来降低噪声的影响。考虑到通信过程中的噪声,我们首先将问题表述为最坏情况下各节点的并行优化问题。针对目标函数不存在最大噪声条件和非凸性的问题,利用基于采样的连续凸逼近算法来开发一种可行的训练方案。此外,从理论角度分析了所提设计的收敛速度。最后,通过仿真验证了该设计的预测精度提高和损失函数值降低。
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