物联网中个人数据隐私的聚合风险建模

Jinhong Yang, Chul-Soo Kim, Md. Mehedi Hassan Onik
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引用次数: 4

摘要

人们对个人数据挖掘和用户分析越来越感兴趣,以改进监视实践,以便快速分析底层业务模式。来自个人身份信息(PII)的用户分析是在移动设备、网络浏览器、智能家居、物联网(IoT)等领域侵犯个人数据隐私的一种技术。本研究通过对物联网环境中的个人信息进行汇总风险建模,提出了PII风险因素。直观地看,大多数物联网设备都是由相同的制造商生产的。同样,智能设备通常从大量设备中收集事实,而收集到的信息的所有者是相互包容的。提出的海量个人信息聚类(MPIC)模型表明,物联网产品制造公司可以将从a)物联网设备管理应用程序和b)设备数据流收集的PII聚类。随后,以所有者为中心的聚合物联网设备数据可以揭示用户ID,这是其他研究没有考虑到的。我们的方法得到了来自物联网标准化组织(开放连接论坛)、Android和iOS应用商店的令人满意的数据分析的验证。分析显示,80- 90%的可用物联网设备由6-10家大公司制造,这些公司有5个潜在的PII威胁。如果不能正确测量通过多个物联网设备收集(聚合)的集体信息,则位置、电子邮件、生物ID、上下文行为和社交图谱等个人信息将面临风险。最后,提出了在智能物联网生态系统中建立隐私保护的研究方向。
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Aggregated Risk Modelling of Personal Data Privacy in Internet of Things
There is a growing interest in personal data mining and user profiling to improve the surveillance practices for rapid analysis of underlying business patterns. User profiling from Personally Identifiable Information (PII) is one such technique to breach personal data privacy in mobile devices, web browser, smart homes, Internet of Things (IoT) etc. This study proposes a PII risk factor by bringing aggregated risk modelling of personal information in the IoT environment. Intuitively, most of the IoT devices are produced by identical manufacturers. Similarly, smart devices typically assemble facts from plentiful devices where collected information’s owners are mutually inclusive. Proposed Massive Personal Information Clustering (MPIC) model shows that IoT product manufacturing companies can cluster PII collected from a) IoT device managing application and b) device data flow. Subsequently, owner-centric aggregated IoT device data can reveal user ID, which was not considered by other studies. Our approach was validated by satisfactory data analysis from IoT standardization organization (Open Connectivity Forum), Android and iOS app store. The analysis shows 80-90 percent of available IoT devices are manufactured by 6-10 major companies with 5 potential PII threats. Personal information like location, email, biological ID, contextual actions and social graph are at risk if collective information gathering (aggregation) through multiple IoT devices are not correctly measured. Finally, research directions in establishing privacy preservation in smart IoT ecosystem are advocated.
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