论文标题

智能公共交通的有效且可靠的异步联合学习计划

An Efficient and Reliable Asynchronous Federated Learning Scheme for Smart Public Transportation

论文作者

Xu, Chenhao, Qu, Youyang, Luan, Tom H., Eklund, Peter W., Xiang, Yong, Gao, Longxiang

论文摘要

由于交通状况会随时间变化,因此必须在智能公共交通中连续有效地更新流量的机器学习模型。联合学习(FL)是一种分布式机器学习方案,它允许公共汽车接收模型更新,而无需在云上等待模型培训。但是,由于公共汽车在公共场所旅行以来,FL容易受到中毒或DDOS攻击的影响。一些工作引入了区块链以提高可靠性,但是共识过程的额外延迟降低了FL的效率。异步联合学习(AFL)是一种降低聚合以提高效率的潜伏期的方案,但是由于不合理的加权本地模型,学习绩效是不稳定的。为了应对上述挑战,本文提供了一种基于动态缩放系数(DBAFL)的基于区块链的异步联合学习方案。具体而言,基于委员会的新型共识算法用于区块链,以最低的时间成本提高了可靠性。同时,设计的动态缩放系数允许AFL为陈旧的本地模型分配合理的权重。在异质设备上进行的广泛实验验证了DBAFL的学习效果,效率和可靠性优于外观的实验。

Since the traffic conditions change over time, machine learning models that predict traffic flows must be updated continuously and efficiently in smart public transportation. Federated learning (FL) is a distributed machine learning scheme that allows buses to receive model updates without waiting for model training on the cloud. However, FL is vulnerable to poisoning or DDoS attacks since buses travel in public. Some work introduces blockchain to improve reliability, but the additional latency from the consensus process reduces the efficiency of FL. Asynchronous Federated Learning (AFL) is a scheme that reduces the latency of aggregation to improve efficiency, but the learning performance is unstable due to unreasonably weighted local models. To address the above challenges, this paper offers a blockchain-based asynchronous federated learning scheme with a dynamic scaling factor (DBAFL). Specifically, the novel committee-based consensus algorithm for blockchain improves reliability at the lowest possible cost of time. Meanwhile, the devised dynamic scaling factor allows AFL to assign reasonable weights to stale local models. Extensive experiments conducted on heterogeneous devices validate outperformed learning performance, efficiency, and reliability of DBAFL.

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