PPFM: An Adaptive and Hierarchical Peer-to-Peer Federated Meta-Learning Framework

Zhengxin Yu, Yang Lu, P. Angelov, N. Suri
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引用次数: 1

Abstract

With the advancement in Machine Learning (ML) techniques, a wide range of applications that leverage ML have emerged across research, industry, and society to improve application performance. However, existing ML schemes used within such applications struggle to attain high model accuracy due to the heterogeneous and distributed nature of their generated data, resulting in reduced model performance. In this paper we address this challenge by proposing PPFM: an adaptive and hierarchical Peer-to-Peer Federated Meta-learning framework. Instead of leveraging a conventional static ML scheme, PPFM uses multiple learning loops to dynamically self-adapt its own architecture to improve its training effectiveness for different generated data characteristics. Such an approach also allows for PPFM to remove reliance on a fixed centralized server in a distributed environment by utilizing peer-to-peer Federated Learning (FL) framework. Our results demonstrate PPFM provides significant improvement to model accuracy across multiple datasets when compared to contemporary ML approaches.
PPFM:自适应分层点对点联邦元学习框架
随着机器学习(ML)技术的进步,利用ML的广泛应用已经在研究、工业和社会中出现,以提高应用程序的性能。然而,在这些应用程序中使用的现有ML方案由于其生成数据的异构和分布式特性而难以获得高模型精度,从而导致模型性能降低。在本文中,我们通过提出PPFM来解决这一挑战:一个自适应的分层点对点联邦元学习框架。PPFM没有利用传统的静态ML方案,而是使用多个学习循环来动态自适应自己的体系结构,以提高对不同生成数据特征的训练效率。这种方法还允许PPFM通过利用点对点联邦学习(FL)框架来消除对分布式环境中固定集中式服务器的依赖。我们的研究结果表明,与当代ML方法相比,PPFM在跨多个数据集的模型准确性方面提供了显着提高。
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