移动健康助力民族传统体育:基于人工智能的数据分析提高安全性

IF 0.9 Q4 TELECOMMUNICATIONS
Ning Liu, Yuzhu Jin
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引用次数: 0

摘要

民族传统体育塑造了中华民族坚实的民族精神,移动健康的发展已延伸到各个领域。在本研究中,我们将移动健康赋能于民族传统体育。将用于采集健康数据的传感器佩戴在运动员身上,并通过网络与汇节点通信,通过数据分析为民族传统体育运动员提供更好的训练指导。然而,用于收集健康数据的设备可能来自许多公司,数据汇总不可避免地涉及数据安全问题。作为一种新的人工智能基础技术,联盟学习可以在原始数据本地化的情况下,利用运动员的健康数据训练数据分析模型,在一定程度上解决健康数据共享中的安全和隐私问题。为此,提出了一种在不信任的中心服务器下动态聚合权重的差异化私有动态联合学习框架,该框架设置了动态模型聚合权重,该方法直接从不同参与者的数据中进行联合学习。该学习模型聚合了权重,因此适用于非独立数据环境。实验结果表明,所提出的框架不仅提供了局部隐私保证,而且在联合学习中实现了更高的准确性,提高了民族传统体育运动员移动健康数据的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Mobile health-empowered traditional ethnic sports: AI-based data analysis improving security

Mobile health-empowered traditional ethnic sports: AI-based data analysis improving security

Traditional ethnic sports shape the Chinese nation's solid national spirit, and mobile health development has been extended to various fields. In this study, we empower mobile health to traditional ethnic sports. Sensors used for collecting health data are worn on athletes and communicated with sink nodes through the network to provide better training guidance for traditional ethnic sports athletes through data analysis. However, the devices used to collect health data may come from many companies, and aggregating the data inevitably involves data security. As a new basic artificial intelligence technology, federated learning can use the health data of athletes to train the data analysis model in the case of original data localization, to solve the security and privacy problems in health data sharing to a certain extent. To this end, a differentially private-dynamic federated learning framework for dynamic aggregation weights under an untrusted central server is proposed, which sets a dynamic model aggregation weight, and this method directly learns federated learning from the data of different participants. The learning model aggregates the weights so that it is suitable for non-independent data environments. Experimental results show that the proposed framework not only provides local privacy guarantees, but also achieves higher accuracy and improves the security of mobile health data of traditional ethnic sports athletes in federated learning.

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