论文标题

FEDCM:用于联合学习的参与者的实时贡献测量方法

FedCM: A Real-time Contribution Measurement Method for Participants in Federated Learning

论文作者

Liu, Boyi, Yan, Bingjie, Zhou, Yize, Liang, Zhixuan, Xu, Cheng-Zhong

论文摘要

联合学习(FL)为多个代理商创建了一个生态系统,以与数据隐私考虑有关建立模型。 FL系统中每个代理的贡献测量方法对于公平学分分配至关重要,但很少有人提出。在本文中,我们开发了一种简单但功能强大的实时贡献测量方法FEDCM。该方法定义了每个代理的影响,全面考虑了当前的一轮和上一轮,以通过注意聚合获得每个代理的贡献率。此外,FEDCM会在每回合中更新贡献,从而使其能够实时执行。现有方法不考虑实时,但是对于FL系统分配计算能力,通信资源等是​​至关重要的。与最先进的方法相比,实验结果表明,在实时前提下,FedCM对数据数量和数据质量更敏感。此外,我们开发了基于FedCM的联合学习开源软件。该软件已应用于基于医学图像的COVID-19。

Federated Learning (FL) creates an ecosystem for multiple agents to collaborate on building models with data privacy consideration. The method for contribution measurement of each agent in the FL system is critical for fair credits allocation but few are proposed. In this paper, we develop a real-time contribution measurement method FedCM that is simple but powerful. The method defines the impact of each agent, comprehensively considers the current round and the previous round to obtain the contribution rate of each agent with attention aggregation. Moreover, FedCM updates contribution every round, which enable it to perform in real-time. Real-time is not considered by the existing approaches, but it is critical for FL systems to allocate computing power, communication resources, etc. Compared to the state-of-the-art method, the experimental results show that FedCM is more sensitive to data quantity and data quality under the premise of real-time. Furthermore, we developed federated learning open-source software based on FedCM. The software has been applied to identify COVID-19 based on medical images.

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