移动位置服务中的隐私暴露问题

Fang-jing Wu, Matthias R. Brust, Yan-Ann Chen, Tie Luo
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引用次数: 13

摘要

基于移动位置的服务(lbs)通过移动众包为用户提供基于用户位置的上下文感知智能服务。由于智能手机能够收集和传播大量的用户位置嵌入式传感信息,因此对移动用户的隐私保护已经成为一个至关重要的问题。为了支持移动lbs评估隐私保护解决方案的有效性,本文提出了一种称为隐私暴露的度量来量化隐私的概念,这是主观和定性的。该度量结合了活动覆盖率和活动一致性来解决两个主要的隐私威胁,即活动热点披露和活动转移披露。此外,我们还提出了一种最小化移动lbs隐私暴露的算法。我们通过广泛的模拟来评估所提出的度量和隐私保护感知算法。此外,我们还在基于android的移动系统中实现了该算法,并进行了实际实验。我们的模拟和实验结果表明:(1)所提出的度量可以适当地量化人类活动在空间域的隐私暴露水平;(2)所提出的算法可以有效地掩盖用户在高和低用户移动水平下的活动热点和转移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Privacy Exposure Problem in Mobile Location-Based Services
Mobile location-based services (LBSs) empowered by mobile crowdsourcing provide users with context- aware intelligent services based on user locations. As smartphones are capable of collecting and disseminating massive user location-embedded sensing information, privacy preservation for mobile users has become a crucial issue. This paper proposes a metric called privacy exposure to quantify the notion of privacy, which is subjective and qualitative in nature, in order to support mobile LBSs to evaluate the effectiveness of privacy-preserving solutions. This metric incorporates activity coverage and activity uniformity to address two primary privacy threats, namely activity hotspot disclosure and activity transition disclosure. In addition, we propose an algorithm to minimize privacy exposure for mobile LBSs. We evaluate the proposed metric and the privacy-preserving sensing algorithm via extensive simulations. Moreover, we have also implemented the algorithm in an Android-based mobile system and conducted real-world experiments. Both our simulations and experimental results demonstrate that (1) the proposed metric can properly quantify the privacy exposure level of human activities in the spatial domain and (2) the proposed algorithm can effectively cloak users' activity hotspots and transitions at both high and low user-mobility levels.
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