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Scalable Private P2P network for distributed and Hierarchical Machine Learning in VANETs

机译:用于vanets的分布式和分层机器学习的可扩展私有P2P网络

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With the recent development of the Internet of Things (IoT), applications are becoming smarter and connected devices are being used in all aspects. As the amount of collected data increases, machine learning (ML) technology has been applied and is being used as a useful tool for extracting vast amounts of information. If the data set is wide and distributed, old machine learning algorithms cannot be used because the whole training data should be centralized in one location. Therefore, distributed learning, federated learning, and circular learning are being used. In this paper, we propose a new Trust-based Edge network architecture that is suitable for distributed learning and hierarchical machine learning in a Vehicular ad-hoc network(VANETs) it is inspired by Dempster-Shafer theory with Scalable Chord Peer to Peer Network. In order to cut down on computation, communication costs, and time.
机译:随着最近的事物互联网(物联网),应用程序正在变得更智能,并且在各方面都使用连接的设备。随着收集的数据量增加,机器学习(ML)技术已应用,并被用作提取大量信息的有用工具。如果数据集是宽和分布式,则不能使用旧机器学习算法,因为整个训练数据应集中在一个位置。因此,正在使用分布式学习,联合学习和循环学习。在本文中,我们提出了一种新的基于信任的边缘网络架构,该架构适用于在车辆ad-hoc网络(VANET)中的分布式学习和分层机器学习,它由Dempster-Shafer理论与可伸缩的Chord对等网络进行启发。为了减少计算,通信成本和时间。

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