MaPIR:基于映射的lbi位置隐私私有信息检索

P. Wightman, M. Zurbarán, Miguel E. Rodríguez, M. Labrador
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引用次数: 6

摘要

基于位置的服务(lbs)的普及为用户和服务提供商带来了好处,既提高了现有服务的质量,又改善了用户体验。同时,位置隐私也成为保障用户隐私权的关键问题之一。尽管保护位置信息的最佳方法之一是不泄露它,但使用这些信息进行个性化服务有其优势,但有必要确保其受到保护。私有信息检索是一种技术,它在用户和服务提供者之间创建一种公共语言,以便外部参与者无法理解正在传输的大多数信息。MaPIR是一种基于映射的私有信息检索技术,它使用数学生成的映射来创建冗余,以便为具有不可区分位置的用户提供多个答案。这种技术是去中心化的,专注于基于兴趣点搜索的应用程序,而不是跟踪服务。为了进行性能评价,比较了MaPIR在常规空间查询和虚拟查询两种场景下的性能,结果表明MaPIR在数据库处理上只花费常规地理查询一半的时间,比虚拟查询技术少5倍,同时提供相似的冗余水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MaPIR: Mapping-based private information retrieval for location privacy in LBISs
The popularization of Location-Based Services (LBSs) has brought along benefits for users and service provider, in terms of improved quality of existing services and a better user experience. At the same time, location privacy has become one of the most critical concerns for ensuring users' right to protection. Despite the fact that one of the best ways to protect the location information is not to reveal it, there are advantages on using this information to personalize services, however it is necessary to guarantee its protection. Private Information Retrieval is a technique that creates a common language between users and service provider so that external actors cannot understand most of the information being transferred. This paper introduces MaPIR, a mapping-based private information retrieval technique that uses mathematically generated mapping to create redundancy in order to provide multiple answers to a user with an undistinguishable location. This technique is decentralized and focuses on Point of Interest Search-based application, not on tracking services. For performance evaluation, were compared in two scenarios MaPIR, a regular spatial query and the Dummy Query technique, the results show that MaPIR takes only half the time of regular geographical queries on database processing, and 5 times less than the Dummy Query technique, while providing a similar level of redundancy.
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