A Data Clustering Strategy for Enhancing Mutual Privacy in Healthcare System of IoT

Xuancheng Guo, Hui Lin, Chuanfeng Xu, Wenzhong Lin
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引用次数: 1

Abstract

Recent advances in the healthcare system of Internet of Things (IoT) has led to a generation of a large amount of physic sensor data. Data analyst collects and analyzes these sensor data through wireless sensor network, so as to provide some treatment advices to physicians and patients. As a common data mining method, the k-means clustering algorithm is being applied to process large-scale sensor data. However, it also poses a threat of privacy leakage in the specific application process. To enhance the privacy in healthcare system of IoT, mutual privacypreserving k-means strategy (M-PPKS) based on homomorphic encryption is proposed in this paper, which neither discloses an individual's private information nor leaks the cluster center's characteristic data. An extension performance evaluation shows that, in the case of ensuring accurate clustering results, even if the analyst and individuals collude, the M-PPKS can prevent the disclosure of private information.
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物联网医疗系统中增强相互隐私的数据聚类策略
物联网(IoT)医疗系统的最新进展导致了大量物理传感器数据的产生。数据分析师通过无线传感器网络收集和分析这些传感器数据,从而为医生和患者提供一些治疗建议。作为一种常用的数据挖掘方法,k-均值聚类算法正被用于处理大规模传感器数据。但是,在具体的应用过程中,也会带来隐私泄露的威胁。为了增强物联网医疗保健系统的隐私性,本文提出了基于同态加密的互保隐私k-均值策略(M-PPKS),既不泄露个人隐私信息,也不泄露集群中心的特征数据。可拓性能评价表明,在保证聚类结果准确的情况下,即使分析师与个体串通,M-PPKS也能防止私人信息的泄露。
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