Privacy Preserving Reverse k-Nearest Neighbor Queries

Layla Pournajaf, Farnaz Tahmasebian, Li Xiong, V. Sunderam, C. Shahabi
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引用次数: 13

Abstract

Reverse k-nearest neighbor (RkNN) queries are prevalent in location-based services to find those locations that have the query point as one of their k nearest neighbors. However, such query requires users to disclose the location of the query point to a service provider who might be untrustworthy. Previous attempts to preserve the privacy of RkNN queries are either based on weaker notions of privacy such as location cloaking or not efficient when k > 1. In this paper, we propose novel solutions based on the private information retrieval (PIR) mechanism to preserve the privacy of RkNN query points. Our solutions include server-side data indexing and client-side query processing methods to facilitate PIR which is an inherently expensive data retrieval mechanism. We experimentally evaluate our approach using real-world datasets and show that it preserves the location privacy of queries with reasonable computation and storage overhead.
保护隐私的反向k近邻查询
反向k近邻查询(RkNN)在基于位置的服务中很流行,用于查找将查询点作为其k近邻之一的位置。然而,这样的查询要求用户将查询点的位置透露给可能不值得信任的服务提供者。以前保护RkNN查询隐私的尝试要么基于较弱的隐私概念,比如位置隐藏,要么在k > 1时效率不高。本文提出了一种基于私有信息检索(PIR)机制的RkNN查询点隐私保护方案。我们的解决方案包括服务器端数据索引和客户端查询处理方法,以促进PIR,这是一种本质上昂贵的数据检索机制。我们使用真实世界的数据集对我们的方法进行了实验评估,并表明它在合理的计算和存储开销下保留了查询的位置隐私。
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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