基于区块链的车辆可信联邦学习框架

Aojie Li, Xingyan Chang, Jingxiao Ma, Shousheng Sun, Yantao Yu
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引用次数: 0

摘要

随着5G和车联网(IoV)技术的快速发展,车辆需要大量的数据共享,以确保交通安全,提高用户的驾驶体验。然而,传统的共享原始数据的方式导致通信效率低下,并且当数据离开车辆的本地存储时存在隐私泄露的风险。保护隐私的联邦学习(FL)的最新进展为这些挑战提供了解决方案,它允许基于用户数据在本地训练模型,并且只传输带有原始数据的参数。但是由于车辆动态拓扑中缺乏身份管理,使得FL的训练过程容易受到恶意车辆的攻击,严重影响了全局模型的准确性。因此,如何保证FL过程的安全性成为一个至关重要的挑战。在我们的工作中,我们提出了一个基于区块链的可信FL框架,该框架依靠共识机制来确保模型的安全聚合,并使用数字签名来确保恶意车辆的可追溯性,防止恶意车辆再次造成伤害。实验结果表明,该方案有效地提高了恶意场景下全局模型的精度和模型收敛效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VTFL: A Blockchain Based Vehicular Trustworthy Federated Learning Framework
With the rapid development of 5G and Internet of Vehicle (IoV) technology, vehicles require a mass of data-sharing to ensure the traffic safety and improve user’s driving experience. However, the traditional way of sharing the original data leads to inefficient communication and the risk of privacy leakage when data leaves the vehicle’s local-storage. The recent advances of privacy-preserving Federated Learning (FL) bring a solution to these challenges, which allows to train models locally based on user’s data and only transmit the parameters with the raw data. But the lack of identity management in the dynamic topology of vehicles makes the FL’s training process vulnerable to be attacked by malicious vehicles, which spoilages the accuracy of the global model seriously. Therefore, how to ensure the security of the FL process has become a crucial challenge. In our work, we propose a trustworthy FL framework based on blockchain, which relies on consensus mechanism to ensure safe aggregation of models, and uses digital signatures to ensure the traceability of malicious vehicles and prevent the malicious vehicles from doing harm again. Our experiment results show that the proposed scheme effectively improves the precision of global model in the malicious scene and the efficiency of model convergence.
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