Secure federated learning with efficient communication in vehicle network

IF 0.9 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Internet Technology Pub Date : 2020-12-01 DOI:10.3966/160792642020122107022
Yinglong Li, Zhenjiang Zhang, Zhiyuan Zhang, Yi-Chih Kao
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引用次数: 6

Abstract

Internet of Vehicles (IoV) generates large amounts of data at the network edge. Machine learning models are often built on these data, to enable the detection, classification, and prediction of traffic events. Due to network bandwidth, storage, and especially privacy concerns, it is often impossible to send all the IoV data to the edge server for centralized model training . Federated learning is a promising paradigm for distributed machine learning, which enables edge nodes to train models locally. As vehicle usually has unreliable and relatively slow network connection, reducing the communication overhead is importance. In this paper, we propose a secure federated learning with efficient communication (SFLEC) scheme in vehicle network. To protect the privacy of local update, we upload the updated parameters of the model with local differential privacy. We further propose a client selection approach that identifies relevant updates trained by vehicles and prevents irrelevant updates from being uploaded for reduced network footprint to achieve efficient communication. Then we prove the loss function of the trained FL in our scheme exits a theoretical convergence. Finally, we evaluate our scheme on two datasets and compare with basic FL. Our proposed scheme improves the communication efficiency, while preserves the data privacy.
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车辆网络中具有高效通信的安全联合学习
车联网(IoV)在网络边缘生成大量数据。机器学习模型通常建立在这些数据之上,以实现交通事件的检测、分类和预测。由于网络带宽、存储,尤其是隐私问题,通常不可能将所有IoV数据发送到边缘服务器进行集中的模型训练。联合学习是分布式机器学习的一种很有前途的范例,它使边缘节点能够在本地训练模型。由于车辆通常具有不可靠且相对较慢的网络连接,因此减少通信开销非常重要。在本文中,我们提出了一种在车辆网络中具有高效通信的安全联合学习(SFLEC)方案。为了保护局部更新的隐私,我们上传了具有局部差分隐私的模型的更新参数。我们进一步提出了一种客户端选择方法,该方法可以识别车辆训练的相关更新,并防止上传不相关的更新,以减少网络占用,从而实现高效通信。然后我们证明了在我们的方案中训练的FL的损失函数存在理论收敛性。最后,我们在两个数据集上对我们的方案进行了评估,并与基本FL进行了比较。我们提出的方案提高了通信效率,同时保留了数据隐私。
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来源期刊
Journal of Internet Technology
Journal of Internet Technology COMPUTER SCIENCE, INFORMATION SYSTEMS-TELECOMMUNICATIONS
CiteScore
3.20
自引率
18.80%
发文量
112
审稿时长
13.8 months
期刊介绍: The Journal of Internet Technology accepts original technical articles in all disciplines of Internet Technology & Applications. Manuscripts are submitted for review with the understanding that they have not been published elsewhere. Topics of interest to JIT include but not limited to: Broadband Networks Electronic service systems (Internet, Intranet, Extranet, E-Commerce, E-Business) Network Management Network Operating System (NOS) Intelligent systems engineering Government or Staff Jobs Computerization National Information Policy Multimedia systems Network Behavior Modeling Wireless/Satellite Communication Digital Library Distance Learning Internet/WWW Applications Telecommunication Networks Security in Networks and Systems Cloud Computing Internet of Things (IoT) IPv6 related topics are especially welcome.
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