适应适应:跨筒仓联邦学习的学习个性化。

Jun Luo, Shandong Wu
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引用次数: 13

摘要

传统的联邦学习(FL)为具有分散数据的客户联邦训练一个全局模型,从而降低了集中训练的隐私风险。然而,跨非iid数据集的分布变化通常对这种“一模通万”的解决方案提出了挑战。个性化FL旨在系统地缓解这一问题。在这项工作中,我们提出了APPLE,这是一个个性化的跨竖井FL框架,可以自适应地学习每个客户端可以从其他客户端的模型中受益多少。本文还提出了一种在全局目标和局部目标之间灵活控制训练重点的方法。我们对该方法的收敛性和泛化性进行了实证评估,并在两个基准数据集和两个非iid设置下的医学成像数据集上进行了大量实验。结果表明,与文献中其他几种个性化FL方法相比,所提出的个性化FL框架APPLE实现了最先进的性能。该代码可在https://github.com/ljaiverson/pFL-APPLE上公开获得。
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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Adapt to Adaptation: Learning Personalization for Cross-Silo Federated Learning.

Conventional federated learning (FL) trains one global model for a federation of clients with decentralized data, reducing the privacy risk of centralized training. However, the distribution shift across non-IID datasets, often poses a challenge to this one-model-fits-all solution. Personalized FL aims to mitigate this issue systematically. In this work, we propose APPLE, a personalized cross-silo FL framework that adaptively learns how much each client can benefit from other clients' models. We also introduce a method to flexibly control the focus of training APPLE between global and local objectives. We empirically evaluate our method's convergence and generalization behaviors, and perform extensive experiments on two benchmark datasets and two medical imaging datasets under two non-IID settings. The results show that the proposed personalized FL framework, APPLE, achieves state-of-the-art performance compared to several other personalized FL approaches in the literature. The code is publicly available at https://github.com/ljaiverson/pFL-APPLE.

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