移动数据库系统中已知查询隐私保护处理的混合方法

Shixin Tian, Ying Cai, Q. Zheng
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引用次数: 3

摘要

在移动对象数据库系统中,查询发布方和被查询对象都存在位置隐私入侵问题。这个问题的一个解决方案是让用户在进行位置更新时降低其位置分辨率。这种位置隐藏允许移动对象达到所需的保护级别,但可能无法产生准确的查询结果。或者,可以应用诸如安全多方计算之类的加密技术来计算移动对象之间的空间关系,而不需要移动对象透露它们的位置。这种策略产生高质量的查询结果,但通常是计算密集型的,特别是当涉及大量移动对象时。在本文中,我们提出了一种缓解上述困境的混合方法。我们的想法是基于隐藏的位置信息计算近似的查询结果,然后通过应用同态加密来优化查询结果。我们证明了这种方法可以用于KNN查询的高效和隐私保护处理,并通过仿真评估了其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid approach for privacy-preserving processing of knn queries in mobile database systems
In mobile object database systems, both query issuers and queried objects are subject to location privacy intrusion. One solution to this problem is to have users reduce their location resolution when making location update. Such location cloaking allows mobile objects to achieve a desired level of protection, but may not produce accurate query results. Alternatively, one can apply cryptography techniques such as secure multiparty computation to compute the spatial relationship among mobile objects without having mobile objects to disclose their location at all. This strategy produces high quality query results, but in general are computation-intensive, especially when a large number of mobile objects are involved. In this paper, we present a hybrid approach that mitigates the above dilemma. Our idea is to compute approximate query results based on cloaked location information and then refine query results by applying homomorphic encryption. We demonstrate that this approach can be used for efficient and privacy-preserving processing of KNN queries and evaluate its performance through simulation.
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