User Customizable and Robust Geo-Indistinguishability for Location Privacy

Primal Pappachan, Chenxi Qiu, A. Squicciarini, Vishnu Sharma Hunsur Manjunath
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引用次数: 1

Abstract

Location obfuscation functions generated by existing systems for ensuring location privacy are monolithic and do not allow users to customize their obfuscation range. This can lead to the user being mapped in undesirable locations (e.g., shady neighborhoods) to the location-requesting services. Modifying the obfuscation function generated by a centralized server on the user side can result in poor privacy as the original function is not robust against such updates. Users themselves might find it challenging to understand the parameters involved in obfuscation mechanisms (e.g., obfuscation range and granularity of location representation) and therefore struggle to set realistic trade-offs between privacy, utility, and customization. In this paper, we propose a new framework called, CORGI, i.e., CustOmizable Robust Geo-Indistinguishability, which generates location obfuscation functions that are robust against user customization while providing strong privacy guarantees based on the Geo-Indistinguishability paradigm. CORGI utilizes a tree representation of a given region to assist users in specifying their privacy and customization requirements. The server side of CORGI takes these requirements as inputs and generates an obfuscation function that satisfies Geo-Indistinguishability requirements and is robust against customization on the user side. The obfuscation function is returned to the user who can then choose to update the obfuscation function (e.g., obfuscation range, granularity of location representation). The experimental results on a real dataset demonstrate that CORGI can efficiently generate obfuscation matrices that are more robust to the customization by users.
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位置隐私的用户可定制和鲁棒地理不可分辨性
现有系统为保证位置隐私而生成的位置模糊功能是单一的,不允许用户自定义其模糊范围。这可能导致用户在不受欢迎的位置(例如,阴暗的社区)被映射到位置请求服务。修改集中式服务器在用户端生成的混淆函数可能会导致较差的隐私性,因为原始函数对此类更新的鲁棒性不高。用户自己可能会发现很难理解混淆机制中涉及的参数(例如,位置表示的混淆范围和粒度),因此很难在隐私、实用程序和自定义之间做出现实的权衡。在本文中,我们提出了一个名为CORGI的新框架,即自定义鲁棒地理不可分辨性,它生成的位置混淆函数对用户自定义具有鲁棒性,同时基于地理不可分辨性范式提供了强大的隐私保证。CORGI利用给定区域的树表示来帮助用户指定他们的隐私和定制需求。CORGI的服务器端将这些需求作为输入,并生成一个混淆函数,该函数满足地理不可区分性需求,并且对用户端的自定义具有鲁棒性。混淆函数返回给用户,然后用户可以选择更新混淆函数(例如,混淆范围,位置表示的粒度)。在真实数据集上的实验结果表明,CORGI能够有效地生成对用户自定义具有较强鲁棒性的混淆矩阵。
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