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A Model for Context-Aware Location Identity Preservation Using Differential Privacy

机译:使用差异隐私的上下文感知位置身份保存模型

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Geospatial data emanating from GPS-enabled pervasive devices reflects the mobility and interactions between people and places, and poses serious threats to privacy. Most of the existing location privacy works are based on the k-Anonymity privacy paradigm. In this paper, we employ a different and stronger privacy definition called Differential Privacy. We propose a novel context-aware and non context-aware differential privacy technique. Our technique couples Kalman filter and exponential mechanism to ensure differential privacy for spatio-temporal data. We demonstrate that our approach protects outliers and provides stronger privacy than state-of-the-art works.
机译:来自启用GPS的普及型设备发出的地理空间数据反映了人与地方之间的移动性和相互作用,并对隐私构成了严重威胁。现有的大多数位置隐私工程都基于k-匿名隐私范式。在本文中,我们采用了另一个更强大的隐私定义,称为“差异隐私”。我们提出了一种新颖的上下文感知和非上下文感知的差异隐私技术。我们的技术结合了卡尔曼滤波器和指数机制,以确保时空数据的差分隐私。我们证明,与最新技术作品相比,我们的方法可以保护局外人并提供更强的隐私性。

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