Despite increasing uptake, there are still many concerns as to the security of virtual assistant hubs (such as Google Nest and Amazon Alexa) in the home. Consumer fears have been somewhat exacerbated by widely-publicised privacy breaches, and the continued prevalence of high-profile attacks targeting IoT networks. Literature suggests a considerable knowledge gap between consumer understanding and the actual threat environment; furthermore, little work has been done to compare which threat modelling approach(es) would be most appropriate for these devices, in order to elucidate the threats which can then be communicated to consumers. There is therefore an opportunity to explore different threat modelling methodologies as applied to this context, and then use the findings to prototype a software aimed at educating consumers in an accessible manner. Five approaches (STRIDE, CVSS, Attack Trees (a.k.a. Threat Trees), LINDUNN GO, and Quantitative TMM) were compared as these were determined to be either the most prominent or potentially applicable to an IoT context. The key findings suggest that a combination of STRIDE and LINDUNN GO is optimal for elucidating threats under the pressures of a tight industry deadline cycle (with potential for elements of CVSS depending on time constraints), and that the trialled software prototype was effective at engaging consumers and educating about device security. Such findings are useful for IoT device manufacturers seeking to optimally model threats, or other stakeholders seeking ways to increase information security knowledge among consumers.
翻译:消费者恐惧因广泛公开的隐私侵犯以及针对IoT网络的高知名度袭击的继续普遍存在而有所加剧。文献表明消费者理解和实际威胁环境之间的知识差距很大;此外,在比较哪些威胁建模方法最适于这些装置方面,没有做多少工作来比较哪些威胁建模方法最适于这些装置,以便阐明随后可以传递给消费者的威胁。因此,有机会探讨适用于这一背景的不同威胁建模方法,然后利用研究结果为旨在以无障碍方式教育消费者的软件原型。有五种方法(STIDE、CVSS、攻击树(a.k.a.a.威胁树)、LINDUNN GO和QQMMM)比较,因为这些方法被确定为最突出或最可能适用于IoT模型。关键结论表明,将TRIDE和LINDUNN GO结合起来,对于在紧凑的行业压力下消除威胁最为合适,然后将结果用于对消费者进行原型教育。