Practical private shortest path computation based on Oblivious Storage

Dong Xie, Guanru Li, Bin Yao, Xuan Wei, Xiaokui Xiao, Yunjun Gao, M. Guo
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引用次数: 25

Abstract

As location-based services (LBSs) become popular, location-dependent queries have raised serious privacy concerns since they may disclose sensitive information in query processing. Among typical queries supported by LBSs, shortest path queries may reveal information about not only current locations of the clients, but also their potential destinations and travel plans. Unfortunately, existing methods for private shortest path computation suffer from issues of weak privacy property, low performance or poor scalability. In this paper, we aim at a strong privacy guarantee, where the adversary cannot infer almost any information about the queries, with better performance and scalability. To achieve this goal, we introduce a general system model based on the concept of Oblivious Storage (OS), which can deal with queries requiring strong privacy properties. Furthermore, we propose a new oblivious shuffle algorithm to optimize an existing OS scheme. By making trade-offs between query performance, scalability and privacy properties, we design different schemes for private shortest path computation. Eventually, we comprehensively evaluate our schemes upon real road networks in a practical environment and show their efficiency.
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基于遗忘存储的实用私有最短路径计算
随着基于位置的服务(lbs)的流行,位置相关查询引起了严重的隐私问题,因为它们可能在查询处理中泄露敏感信息。在lbs支持的典型查询中,最短路径查询不仅可以显示有关客户当前位置的信息,还可以显示有关客户潜在目的地和旅行计划的信息。然而,现有的私有最短路径计算方法存在隐私性弱、性能低、可扩展性差等问题。在本文中,我们的目标是一个强大的隐私保证,对手几乎不能推断任何关于查询的信息,具有更好的性能和可扩展性。为了实现这一目标,我们引入了一个基于遗忘存储(OS)概念的通用系统模型,该模型可以处理需要强隐私属性的查询。此外,我们提出了一种新的无关洗牌算法来优化现有的操作系统方案。通过权衡查询性能、可扩展性和隐私属性,我们设计了不同的私有最短路径计算方案。最后,我们在实际环境中对我们的方案进行了综合评估,并证明了它们的有效性。
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