A framework for context-aware privacy of sensor data on mobile systems

Supriyo Chakraborty, K. Raghavan, Matthew P. Johnson, M. Srivastava
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引用次数: 66

Abstract

We study the competing goals of utility and privacy as they arise when a user shares personal sensor data with apps on a smartphone. On the one hand, there can be value to the user for sharing data in the form of various personalized services and recommendations; on the other hand, there is the risk of revealing behaviors to the app producers that the user would like to keep private. The current approaches to privacy, usually defined in multi-user settings, rely on anonymization to prevent such sensitive behaviors from being traced back to the user---a strategy which does not apply if user identity is already known, as is the case here. Instead of protecting identity, we focus on the more general problem of choosing what data to share, in such a way that certain kinds of inferences---i.e., those indicating the user's sensitive behavior---cannot be drawn. The use of inference functions allows us to establish a terminology to unify prior notions of privacy as special cases of this more general problem. We identify several information disclosure regimes, each corresponding to a specific privacy-utility tradeoff, as well as privacy mechanisms designed to realize these tradeoff points. Finally, we propose ipShield as a privacy-aware framework which uses current user context together with a model of user behavior to quantify an adversary's knowledge regarding a sensitive inference, and obfuscate data accordingly before sharing. We conclude by describing initial work towards realizing this framework.
移动系统上传感器数据的上下文感知隐私框架
当用户与智能手机上的应用程序共享个人传感器数据时,我们研究了实用性和隐私性的竞争目标。一方面,以各种个性化服务和推荐的形式分享数据对用户来说是有价值的;另一方面,也存在向应用开发者透露用户隐私行为的风险。目前的隐私保护方法通常是在多用户设置中定义的,依靠匿名化来防止此类敏感行为被追溯到用户身上——如果用户身份已经已知,这种策略就不适用了,就像这里的情况一样。我们没有保护身份,而是专注于选择共享哪些数据这一更普遍的问题,以这种方式,某些类型的推断——即。也就是那些表示用户敏感行为的表情——不能画出来。推理函数的使用使我们能够建立一个术语来统一先前的隐私概念,作为这个更普遍问题的特殊情况。我们确定了几种信息披露制度,每种制度对应于特定的隐私-效用权衡,以及为实现这些权衡点而设计的隐私机制。最后,我们提出ipShield作为一个隐私感知框架,它使用当前用户上下文和用户行为模型来量化对手关于敏感推断的知识,并在共享之前相应地混淆数据。最后,我们描述了实现这一框架的初步工作。
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