Identifying privacy weaknesses from multi-party trigger-action integration platforms

Kulani Mahadewa, Yanjun Zhang, Guangdong Bai, Lei Bu, Zhiqiang Zuo, Dileepa Fernando, Zhenkai Liang, J. Dong
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引用次数: 13

Abstract

With many trigger-action platforms that integrate Internet of Things (IoT) systems and online services, rich functionalities transparently connecting digital and physical worlds become easily accessible for the end users. On the other hand, such facilities incorporate multiple parties whose data control policies may radically differ and even contradict each other, and thus privacy violations may arise throughout the lifecycle (e.g., generation and transmission) of triggers and actions. In this work, we conduct an in-depth study on the privacy issues in multi-party trigger-action integration platforms (TAIPs). We first characterize privacy violations that may arise with the integration of heterogeneous systems and services. Based on this knowledge, we propose Taifu, a dynamic testing approach to identify privacy weaknesses from the TAIP. The key insight of Taifu is that the applets which actually program the trigger-action rules can be used as test cases to explore the behavior of the TAIP. We evaluate the effectiveness of our approach by applying it on the TAIPs that are built around the IFTTT platform. To our great surprise, we find that privacy violations are prevalent among them. Using the automatically generated 407 applets, each from a different TAIP, Taifu detects 194 cases with access policy breaches, 218 access control missing, 90 access revocation missing, 15 unintended flows, and 73 over-privilege access.
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识别多方触发-操作集成平台的隐私弱点
随着许多触发器操作平台集成了物联网(IoT)系统和在线服务,最终用户可以轻松访问透明连接数字和物理世界的丰富功能。另一方面,这些设施包含多方,其数据控制策略可能完全不同,甚至相互矛盾,因此在触发器和操作的整个生命周期(例如,生成和传输)中可能会出现隐私侵犯。在这项工作中,我们对多方触发-动作集成平台(TAIPs)中的隐私问题进行了深入研究。我们首先描述了在集成异构系统和服务时可能出现的隐私侵犯。在此基础上,我们提出了一种动态测试方法Taifu,从TAIP中识别隐私弱点。Taifu的关键见解是,实际编写触发-操作规则的applet可以用作测试用例来探索TAIP的行为。我们通过将其应用于围绕IFTTT平台构建的ttip来评估我们方法的有效性。令我们非常惊讶的是,我们发现侵犯隐私的行为在他们中间很普遍。使用自动生成的407个applet(每个applet都来自不同的TAIP), Taifu检测到194个访问策略违规案例,218个访问控制缺失,90个访问撤销缺失,15个意外流和73个超权限访问。
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