使用区块链的安全增强联邦学习方法

S. Revathy, S. Priya
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引用次数: 0

摘要

在传统的机器学习方法中,从所有边缘设备收集的数据被发送到中央服务器进行训练和预测输出。在集中式方式中,用户在将自己的数据共享给集中式服务器时,不得不在数据的隐私性和完整性上做出妥协。为了克服这一问题,引入了联邦机器学习方法,其中模型和数据分散,机器学习模型将在本地设备的数据上进行训练,参数将发送到云服务器进行共识更改,增强用户的数据隐私性。但是,在联邦机器学习中,节点到云服务器的身份验证和云服务器的身份验证仍然是一个需要解决的主要问题,因为恶意节点可以冒充身份验证的节点并与云服务器通信。在提出的模型中,节点身份验证使用基于以太坊的区块链和智能合约实现,从而增强了联邦机器学习方法的安全性。测量了节点认证的效率,并与机器学习算法进行了比较,准确率达到99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security Enhanced Federated Learning Approach using Blockchain
In traditional machine learning approach, data gathered from all the edge devices are sent to centralized server for training and prediction of the output. In the centralized approach, user has to compromise on the data privacy and integrity in sharing their own data to centralized server. To overcome this issue federated machine learning approach was introduced, in which model and data are decentralized and the machine learning model will be trained on the data in local devices and parameters will be sent to cloud server for consensus change, enhancing the data privacy of the users. But still authentication of the nodes to cloud server and vice versa is a major concern to be addressed in federated machine learning as malicious nodes can impersonate as authenticated node and communicate to cloud server. In the proposed model, node authentication is implemented using Ethereum based blockchain with smart contracts thereby enhancing security of Federated machine learning approach. The efficiency of the node authentication is measured and compared with machine learning algorithms which achieves 99% accuracy.
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