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Semantic-aware Dummy Selection for Location Privacy Preservation

机译:语义意识到位置隐私保存的假设

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摘要

With the development of smart devices and mobile positioning technologies, location-based services (LBS) has become more and more popular. While enjoying the convenience and entertainments provided by LBS, users are vulnerable to the increased privacy leakages of locations as another kind of quasi-identifiers. Most existing location privacy preservation algorithms are based on region cloaking which blurs the exact position into a region, and hence prone to inaccuracies of query results. Dummy-based approaches for location privacy preservation proposed recently overcome the above problem, but did not consider the problem of location semantic homogeneity. In this paper, we propose the Dummy Selection on Maximizing Minimum Distance (MaxMinDistDS) and simplified MaxMinDistDS (Simp-MaxMinDistDS) that take into account both semantic diversity and physical dispersion of locations. MaxMinDistDS solves this dual-objective optimization problem by a greedy approach of maximizing first semantic diversity and then physical dispersion, and SimpMaxMinDistDS solves a simplified problem of single-objective optimization by uniting the two objectives together in order to improve the efficiency. Besides, we introduce a simplified way of computing location semantic distances by establishing a location semantic tree (LST) based on the hierarchy of locations and transforming the semantic distance into hops between nodes in LST. The efficiency and effectiveness of the proposed algorithms have been validated by a set of carefully designed experiments. The experimental results also show that our algorithms significantly improve the privacy level, compared to other dummy-based solutions.
机译:随着智能设备和移动定位技术的开发,基于位置的服务(LBS)变得越来越受欢迎。在享受LBS提供的便利和娱乐期间,用户容易受到地点的增加隐私泄漏作为另一种准标识符。大多数现有位置隐私保存算法基于区域覆盖,将确切的位置与区域进行模糊,因此容易出现查询结果的不准确性。基于虚拟的位置隐私保护方法最近克服了上述问题,但没有考虑位置语义同质性问题。在本文中,我们提出了在最大化最小距离(MaxMindistDS)和简化的MaxMindistDS(SIMP-MAXMINDISTDS)上的虚拟选择,以考虑到位置的语义多样性和物理色散。 MaxMindistDS通过贪婪的方法通过最大化第一语义多样性和物理色散来解决这种双目标优化问题,并且SimpMaxMindistDS通过将两个目标联合在一起以提高效率来解决单目标优化的简化问题。此外,我们通过基于位置的层次结构建立位置语义树(LST)来引入计算位置语义距离的简化方式,并将语义距离转换为LST中的节点之间的跳跃。所提出的算法的效率和有效性已通过一套精心设计的实验验证。实验结果还表明,与其他基于假的解决方案相比,我们的算法显着提高了隐私水平。

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