论文标题

移动互联网中联邦学习模型的公平和自主共享

Fair and autonomous sharing of federate learning models in mobile Internet of Things

论文作者

Hao, Xiaohan, Ren, Wei, Xiong, Ruoting, Zheng, Xianghan, Zhu, Tianqing, Xiong, Neal N.

论文摘要

联邦学习可以进行机器学习,并保护相应目的的自有培训数据的隐私,而不必上传到中央信任的数据聚合服务器。在移动方案中,可能不存在集中式信任的服务器,即使存在,延迟也无法管理,例如智能驾驶汽车。因此,以隐私意识在边缘的移动联邦学习被吸引到越来越多的注意力。然后,它引发了一个问题 - 在在移动终端上训练数据以获取学习模型之后,如何共享模型参数以及其他模型参数以创建更准确,更健壮的累积最终模型。这种模型共享面临的几个挑战,例如,必须在没有第三个值得信赖的方(自主权)的情况下进行共享,并且由于模型培训(通过培训数据)是有价值的,因此共享必须是公平的。为了应对上述挑战,我们提出了基于智能合约和IPF(行业间文件系统)的模型共享协议和算法,以应对挑战。所提出的协议不依赖于受信任的第三方,在该第三方中,在相应的目的中共享/存储了个人学习的模型。通过广泛的实验进行的,评估了所提出的方案的三个主要步骤。这三个步骤的平均执行时间为0.059,0.060和0.032,表明其效率。

Federate learning can conduct machine learning as well as protect the privacy of self-owned training data on corresponding ends, instead of having to upload to a central trusted data aggregation server. In mobile scenarios, a centralized trusted server may not be existing, and even though it exists, the delay will not be manageable, e.g., smart driving cars. Thus, mobile federate learning at the edge with privacy-awareness is attracted more and more attentions. It then imposes a problem - after data are trained on a mobile terminal to obtain a learned model, how to share the model parameters among others to create more accurate and robust accumulative final model. This kind of model sharing confronts several challenges, e.g., the sharing must be conducted without a third trusted party (autonomously), and the sharing must be fair as model training (by training data)is valuable. To tackle the above challenges, we propose a smart contract and IPFS (Inter-Planetary File System) based model sharing protocol and algorithms to address the challenges. The proposed protocol does not rely on a trusted third party, where individual-learned models are shared/stored in corresponding ends. Conducted through extensive experiments, three main steps of the proposed protocol are evaluated. The average executive time of the three steps are 0.059s, 0.060s and 0.032s, demonstrating its efficiency.

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