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Semantics-Aware Privacy Risk Assessment Using Self-Learning Weight Assignment for Mobile Apps

机译:使用自学习权重分配移动应用程序的语义感知隐私风险评估

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Most of the existing mobile application (app) vetting mechanisms only estimate risks at a coarse-grained level by analyzing app syntax but not semantics. We propose a semantics-aware privacy risk assessment framework (SPRisk), which considers the sensitivity discrepancy of privacy-related factors at semantic level. Our framework can provide qualitative (i.e., risk level) and quantitative (i.e., risk score) assessment results, both of which help users make decisions to install an app or not. Furthermore, to find the reasonable weight distribution of each factor automatically, we exploit a self-learning weight assignment method, which is based on fuzzy clustering and knowledge dependency theory. We implement a prototype system and evaluate the effectiveness of SPRisk with 192,445 normal apps and 7,111 malicious apps. A measurement study further reveals some interesting findings, such as the privacy risk distribution of Google Play Store, the diversity of official and unofficial marketplaces, which provide insights into understanding the seriousness of privacy threat in the Android ecosystem.
机译:大多数现有移动应用程序(APP)审查机制仅通过分析应用程序语法但不是语义来估计粗粒度级别的风险。我们提出了一个语义知识的隐私风险评估框架(SPRISK),其认为隐私相关因素在语义上的敏感性差异。我们的框架可以提供定性(即风险等级)和定量(即风险评分)评估结果,这两者都帮助用户做出了安装应用程序的决策。此外,为了自动找到每个因素的合理权重分布,我们利用自学习权重分配方法,这是基于模糊聚类和知识依赖理论。我们实现了原型系统,并评估了192,445个普通应用和7,111个恶意应用程序的跑步的有效性。测量研究进一步揭示了一些有趣的调查结果,例如谷歌播放商店的隐私风险分配,官方和非官方市场的多样性,这提供了了解在Android生态系统中了解隐私威胁的严重性。

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