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Joint Auction-Coalition Formation Framework for Communication-Efficient Federated Learning in UAV-Enabled Internet of Vehicles

机译:联合拍卖 - 联盟形成框架,可在支持无人机互联网上的通信高效联合学习

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摘要

Due to the advanced capabilities of the Internet of Vehicles (IoV) components such as vehicles, Roadside Units (RSUs) and smart devices as well as the increasing amount of data generated, Federated Learning (FL) becomes a promising tool given that it enables privacy-preserving machine learning that can be implemented in the IoV. However, the performance of the FL suffers from the failure of communication links and missing nodes, especially when continuous exchanges of model parameters are required. Therefore, we propose the use of Unmanned Aerial Vehicles (UAVs) as wireless relays to facilitate the communications between the IoV components and the FL server and thus improving the accuracy of the FL. However, a single UAV may not have sufficient resources to provide services for all iterations of the FL process. In this paper, we present a joint auction-coalition formation framework to solve the allocation of UAV coalitions to groups of IoV components. Specifically, the coalition formation game is formulated to maximize the sum of individual profits of the UAVs. The joint auction-coalition formation algorithm is proposed to achieve a stable partition of UAV coalitions in which an auction scheme is applied to solve the allocation of UAV coalitions. The auction scheme is designed to take into account the preferences of IoV components over heterogeneous UAVs. The simulation results show that the grand coalition, where all UAVs join a single coalition, is not always stable due to the profit-maximizing behavior of the UAVs. In addition, we show that as the cooperation cost of the UAVs increases, the UAVs prefer to support the IoV components independently and not to form any coalition.
机译:由于车辆互联网(IOV)组件(如车辆,路边单元(RSU)和智能设备以及所产生的数据量增加,所产生的数据量增加,所以联合学习(FL)成为一个有前途的工具,因为它可以实现隐私 - 可以在IOV中实现的服务器学习。但是,FL的性能受到通信链路和缺失节点的故障,特别是当需要连续交换模型参数时。因此,我们建议使用无人驾驶飞行器(UAV)作为无线继电器,以便于IOV组件和FL服务器之间的通信,从而提高FL的准确性。但是,单个UAV可能没有足够的资源来为流程的所有迭代提供服务。在本文中,我们提出了一份联合拍卖联盟形成框架,以解决无人机联盟的分配给IOV组件的群体。具体而言,联盟形成游戏被制定为最大化无人机的个人利润总和。建议联合拍卖 - 联盟形成算法实现UAV联盟的稳定分区,其中应用拍卖方案来解决UAV联盟的分配。拍卖方案旨在考虑IOV组件在异构无用者身上的偏好。模拟结果表明,所有无人机加入单一联盟的大联盟,由于无人机的利润最大化行为,并不总是稳定的。此外,我们表明,随着无人机的合作成本增加,无人机更倾向于独立支持IOV组件,而不是形成任何联盟。

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