基于信誉和逆向拍卖的横向联邦学习激励机制

Jingwen Zhang, Yuezhou Wu, Rong Pan
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引用次数: 61

摘要

目前对联邦学习的研究主要集中在联合优化、提高效率和有效性、保护隐私等方面。然而,对激励机制的研究相对较少。大多数研究没有考虑到,如果没有利润,参与者就没有动力提供数据和训练模型,任务请求者无法识别和选择具有高质量数据的可靠参与者。为此,本文提出了一种基于声誉和反向拍卖理论的联合学习激励机制。参与者竞标任务,声誉间接反映了他们的可靠性和数据质量。在这个联合学习计划中,我们通过在有限的预算下结合参与者的声誉和出价来选择和奖励参与者。理论分析证明,该机制满足计算效率、个体合理性、预算可行性和真实性。仿真结果表明了该机构的有效性。
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Incentive Mechanism for Horizontal Federated Learning Based on Reputation and Reverse Auction
Current research on federated learning mainly focuses on joint optimization, improving efficiency and effectiveness, and protecting privacy. However, there are relatively few studies on incentive mechanisms. Most studies fail to consider the fact that if there is no profit, participants have no incentive to provide data and training models, and task requesters cannot identify and select reliable participants with high-quality data. Therefore, this paper proposes a federated learning incentive mechanism based on reputation and reverse auction theory. Participants bid for tasks, and reputation indirectly reflects their reliability and data quality. In this federated learning program, we select and reward participants by combining the reputation and bids of the participants under a limited budget. Theoretical analysis proves that the mechanism satisfies computational efficiency, individual rationality, budget feasibility, and truthfulness. The simulation results show the effectiveness of the mechanism.
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