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Blockchain empowered reliable federated learning by worker selection: A trustworthy reputation evaluation method  ( EI收录)  

文献类型:期刊文献

英文题名:Blockchain empowered reliable federated learning by worker selection: A trustworthy reputation evaluation method

作者:Zhang, Qinnan[1]; Ding, Qingyang[2]; Zhu, Jianming[1]; Li, Dandan[2]

第一作者:Zhang, Qinnan

通讯作者:Ding, Qingyang

机构:[1] Central University of Finance and Economics, School of Information, Beijing, China; [2] Beijing Union University, School of Management, Beijing, China

第一机构:Central University of Finance and Economics, School of Information, Beijing, China

年份:2021

外文期刊名:2021 IEEE Wireless Communications and Networking Conference Workshops, WCNCW 2021

收录:EI(收录号:20212110388257)

语种:英文

外文关键词:Learning algorithms - Data privacy - Quality control

摘要:Federated learning is a distributed machine learning framework that enables distributed model training with local datasets, which can effectively protect the data privacy of workers (i.e., intelligent edge nodes). The majority of federated learning algorithms assume that the workers are trusted and voluntarily participate in the cooperative model training process. However, the situation in practical application is not consistent with this. There are many challenges such as worker selection schemes for participating workers, which hamper the widespread adoption of federated learning. The existing research about worker selection scheme focused on multi-weight subjective logic model to calculate reputation value and adopted contract theory to motivate workers, which may exist subjective judgmental factors and unfair profit distribution. To address above challenges, we calculate the reputation value by model quality parameters to evaluate the reliability of workers. Blockchain is designed to store historical reputation value that realized tamperresistance and non-repudiation. Numerical results indicate that the worker selection scheme can improve the accuracy of the model and accelerate the model convergence. ? 2021 IEEE.

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