基于联邦学习的物流数据共享方法

Zhihui Wang, Deqian Fu, Jiawei Zhang
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引用次数: 0

摘要

在大数据时代的今天,物流供应链在各个阶段都会产生海量的数据,物流数据的隐私问题日益突出。为了有效地利用各企业的物流数据满足企业的需求,实现安全的数据共享,提出了一种基于联邦学习的物流数据共享方案。利用联邦学习对多个数据源进行联合建模,将每个企业的声誉值存储在区块链上,并对提供高质量数据共享的企业进行奖励。最后,通过仿真实验验证了方案的有效性以及数据质量和算法选择对模型训练的影响。
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Logistics data sharing method based on federated learning
In today's era of big data, the logistics supply chain generates massive amounts of data at all stages, and the privacy issues of logistics data are increasingly prominent. In order to efficiently utilize the logistics data of each enterprise to meet the needs of the enterprise and achieve secure data sharing, a federated learning-based logistics data sharing scheme is proposed. Using federated learning to federate multiple sources of data for modelling, the reputation value of each enterprise is stored on the blockchain and the enterprises that provide high quality data sharing are rewarded. Finally, the effectiveness of the scheme and the impact of data quality and algorithm selection on model training are verified through simulation experiments.
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