Secure Reverse k-Nearest Neighbours Search over Encrypted Multi-dimensional Databases

T. Tzouramanis, Y. Manolopoulos
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引用次数: 9

Abstract

The reverse k-nearest neighbours search is a fundamental primitive in multi-dimensional (i.e. multi-attribute) databases with applications in location-based services, online recommendations, statistical classification, pat-tern recognition, graph algorithms, computer games development, and so on. Despite the relevance and popularity of the query, no solution has yet been put forward that supports it in encrypted databases while protecting at the same time the privacy of both the data and the queries. With the outsourcing of massive datasets in the cloud, it has become urgent to find ways of ensuring the fast and secure processing of this query in untrustworthy cloud computing. This paper presents searchable encryption schemes which can efficiently and securely enable the processing of the reverse k-nearest neighbours query over encrypted multi-dimensional data, including index-based search schemes which can carry out fast query response that preserves data confidentiality and query privacy. The proposed schemes resist practical attacks operating on the basis of powerful background knowledge and their efficiency is confirmed by a theoretical analysis and extensive simulation experiments.
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加密多维数据库的安全反向k近邻搜索
反向k近邻搜索是多维(即多属性)数据库的基本元素,在基于位置的服务、在线推荐、统计分类、模式识别、图形算法、计算机游戏开发等领域都有应用。尽管该查询的相关性和流行度很高,但目前还没有提出在加密数据库中支持该查询的解决方案,同时保护数据和查询的隐私。随着海量数据集在云上的外包,如何在不可信的云计算中保证查询的快速、安全处理已成为当务之急。本文提出了一种可搜索的加密方案,能够高效、安全地处理加密多维数据的逆k近邻查询,其中包括基于索引的搜索方案,它可以实现快速的查询响应,同时保持数据的机密性和查询隐私性。基于强大的背景知识,所提出的方案能够抵御实际攻击,并通过理论分析和大量的仿真实验验证了其有效性。
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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