Hide Your Distance: Privacy Risks and Protection in Spatial Accessibility Analysis.

Liyue Fan, Luca Bonomi
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Abstract

Measuring spatial accessibility to healthcare resources and facilities has long been an important problem in public health. For example, during disease outbreaks, sharing spatial accessibility data such as individual travel distances to health facilities is vital to policy making and designing effective interventions. However, sharing these data may raise privacy concerns, as information about individual data contributors (e.g., health status and residential address) may be disclosed. In this work, we investigate those unintended information leakage in spatial accessibility analysis. Specifically, we are interested in understanding whether sharing data for spatial accessibility computations may disclose individual participation (i.e., membership inference) and personal identifiable information (i.e., address inference). Furthermore, we propose two provably private algorithms that mitigate those privacy risks. The evaluation is conducted with real population and healthcare facilities data from Mecklenburg county, NC and Nashville, TN. Compared to state-of-the-art privacy practices, our methods effectively reduce the risks of membership and address disclosure, while providing useful data for spatial accessibility analysis.

隐藏距离:空间可达性分析中的隐私风险与保护。
长期以来,测量医疗资源和设施的空间可达性一直是公共卫生领域的一个重要问题。例如,在疾病爆发期间,共享个人前往医疗设施的距离等空间可达性数据对于制定政策和设计有效的干预措施至关重要。然而,共享这些数据可能会引发隐私问题,因为个人数据贡献者的信息(如健康状况和住址)可能会被披露。在这项工作中,我们调查了空间可访问性分析中的意外信息泄漏。具体来说,我们有兴趣了解空间可访问性计算中的数据共享是否会泄露个人参与(即成员推断)和个人身份信息(即地址推断)。此外,我们还提出了两种可证明的隐私算法,以降低这些隐私风险。我们使用北卡罗来纳州梅克伦堡县和田纳西州纳什维尔市的真实人口和医疗设施数据进行了评估。与最先进的隐私实践相比,我们的方法有效降低了成员资格和地址泄露的风险,同时为空间可访问性分析提供了有用的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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