基于voronoi的位置隐私语义平衡虚拟生成框架

Aditya Tadakaluru, Xiao Qin
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引用次数: 0

摘要

基于位置的服务(LBS)要求用户提供他们当前的位置,以便进行服务交付和定制。位置隐私保护解决了与提交给LBS提供商的位置信息的潜在错误处理相关的问题。定位精度直接影响服务质量(QoS),定位精度越高,服务质量越好。一般来说,任何位置隐私技术的主要目标都是在尽可能少或不提供位置信息的情况下实现最大的QoS,而使用虚拟位置就是这样一种位置隐私技术。在本文中,我们引入了一种时间约束攻击,攻击者可以利用与位置语义类别相关的时间约束来消除虚拟位置并识别真实位置。我们演示了攻击者如何设计时间约束攻击来破坏住宅位置的位置隐私。我们通过一种新的基于voronoi的语义平衡框架(VSBDG)解决了当前虚拟方法的这一主要限制,该框架能够生成能够承受时间约束攻击的虚拟位置。基于现实世界地理空间数据集构建的vsdg框架利用了空间关系和操作。我们的结果表明,即使在较大的位置集大小下,语义类别之间的物理色散余弦相似度也很高,为0.988。这表明VSBDG的输出位置集中的每个语义类别具有强大且可扩展的语义平衡。VSBDG算法能够产生较高的平均最小色散距离值的位置集,住宅位置为5861.894 m, POI位置为6258.046 m。研究结果表明,每个语义类别中的位置分散得更远,需要优化的位置隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Voronoi-Based Semantically Balanced Dummy Generation Framework for Location Privacy
Location-based services (LBS) require users to provide their current location for service delivery and customization. Location privacy protection addresses concerns associated with the potential mishandling of location information submitted to the LBS provider. Location accuracy has a direct impact on the quality of service (QoS), where higher location accuracy results in better QoS. In general, the main goal of any location privacy technique is to achieve maximum QoS while providing minimum or no location information if possible, and using dummy locations is one such location privacy technique. In this paper, we introduced a temporal constraint attack whereby an adversary can exploit the temporal constraints associated with the semantic category of locations to eliminate dummy locations and identify the true location. We demonstrated how an adversary can devise a temporal constraint attack to breach the location privacy of a residential location. We addressed this major limitation of the current dummy approaches with a novel Voronoi-based semantically balanced framework (VSBDG) capable of generating dummy locations that can withstand a temporal constraint attack. Built based on real-world geospatial datasets, the VSBDG framework leverages spatial relationships and operations. Our results show a high physical dispersion cosine similarity of 0.988 between the semantic categories even with larger location set sizes. This indicates a strong and scalable semantic balance for each semantic category within the VSBDG’s output location set. The VSBDG algorithm is capable of producing location sets with high average minimum dispersion distance values of 5861.894 m for residential locations and 6258.046 m for POI locations. The findings demonstrate that the locations within each semantic category are scattered farther apart, entailing optimized location privacy.
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