Long-Term Client Selection for Federated Learning With Non-IID Data: A Truthful Auction Approach

IF 8.9 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Internet of Things Journal Pub Date : 2024-12-31 DOI:10.1109/JIOT.2024.3524389
Jinghong Tan;Zhian Liu;Kun Guo;Mingxiong Zhao
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Abstract

Federated learning (FL) provides a decentralized framework that enables universal model training through collaborative efforts on mobile nodes, such as smart vehicles in the Internet of Vehicles (IoV). Each smart vehicle acts as a mobile client, contributing to the process without uploading local data. This method leverages nonindependent and identically distributed (non-IID) training data from different vehicles, influenced by various driving patterns and environmental conditions, which can significantly impact model convergence and accuracy. Although client selection can be a feasible solution for non-IID issues, it faces challenges related to selection metrics. Traditional metrics evaluate client data quality independently per round and require client selection after all clients complete local training, leading to resource wastage from unused training results. In the IoV context, where vehicles have limited connectivity and computational resources, information asymmetry in client selection risks clients submitting false information, potentially making the selection ineffective. To tackle these challenges, we propose a novel long-term client-selection federated learning based on truthful auction (LCSFLA). This scheme maximizes social welfare with consideration of long-term data quality using a new assessment mechanism and energy costs, and the advised auction mechanism with a deposit requirement incentivizes client participation and ensures information truthfulness. We theoretically prove the incentive compatibility and individual rationality of the advised incentive mechanism. Experimental results on various datasets,including those from IoV scenarios, demonstrate its effectiveness in mitigating performance degradation caused by non-IID data.
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使用非 IID 数据进行联合学习的长期客户选择:真实拍卖法
联邦学习(FL)提供了一个分散的框架,通过在移动节点(例如车联网(IoV)中的智能汽车)上的协作,实现通用模型训练。每辆智能汽车都充当移动客户端,在不上传本地数据的情况下为整个过程做出贡献。该方法利用来自不同车辆的非独立和同分布(non-IID)训练数据,这些数据受到各种驾驶模式和环境条件的影响,会显著影响模型的收敛性和准确性。尽管客户端选择可以作为非iid问题的可行解决方案,但它面临着与选择度量相关的挑战。传统指标每轮独立评估客户数据质量,并要求在所有客户完成本地培训后选择客户,导致未使用的培训结果造成资源浪费。在车联网环境下,车辆的连通性和计算资源有限,客户端选择中的信息不对称可能会导致客户端提交虚假信息,从而可能导致选择无效。为了解决这些挑战,我们提出了一种新的基于真实拍卖的长期客户选择联邦学习(LCSFLA)。该方案利用一种新的评估机制和能源成本,在考虑长期数据质量的同时,最大限度地提高了社会福利,而要求保证金的建议拍卖机制激励了客户的参与,并确保了信息的真实性。从理论上证明了建议激励机制的激励兼容性和个体合理性。在各种数据集上的实验结果,包括来自IoV场景的数据集,证明了它在缓解非iid数据引起的性能下降方面的有效性。
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来源期刊
IEEE Internet of Things Journal
IEEE Internet of Things Journal Computer Science-Information Systems
CiteScore
17.60
自引率
13.20%
发文量
1982
期刊介绍: The EEE Internet of Things (IoT) Journal publishes articles and review articles covering various aspects of IoT, including IoT system architecture, IoT enabling technologies, IoT communication and networking protocols such as network coding, and IoT services and applications. Topics encompass IoT's impacts on sensor technologies, big data management, and future internet design for applications like smart cities and smart homes. Fields of interest include IoT architecture such as things-centric, data-centric, service-oriented IoT architecture; IoT enabling technologies and systematic integration such as sensor technologies, big sensor data management, and future Internet design for IoT; IoT services, applications, and test-beds such as IoT service middleware, IoT application programming interface (API), IoT application design, and IoT trials/experiments; IoT standardization activities and technology development in different standard development organizations (SDO) such as IEEE, IETF, ITU, 3GPP, ETSI, etc.
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