Data inference from encrypted databases: a multi-dimensional order-preserving matching approach

Yanjun Pan, A. Efrat, Ming Li, Boyang Wang, Hanyu Quan, Joseph S. B. Mitchell, Jie Gao, E. Arkin
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引用次数: 4

Abstract

Due to increasing concerns of data privacy, databases are being encrypted before they are stored on an untrusted server. To enable search operations on the encrypted data, searchable encryption techniques have been proposed. Representative schemes use order-preserving encryption (OPE) for supporting efficient Boolean queries on encrypted databases. Yet, recent works showed the possibility of inferring plaintext data from OPE-encrypted databases, merely using the order-preserving constraints, or combined with an auxiliary plaintext dataset with similar frequency distribution. So far, the effectiveness of such attacks is limited to single-dimensional dense data (most values from the domain are encrypted), but it remains challenging to achieve it on high-dimensional datasets (e.g., spatial data), which are often sparse in nature. In this paper, for the first time, we study data inference attacks on multi-dimensional encrypted databases (with 2-D as a special case). We formulate it as a 2-D order-preserving matching problem and explore both unweighted and weighted cases, where the former maximizes the number of points matched using only order information and the latter further considers points with similar frequencies. We prove that the problem is NP-hard, and then propose a greedy algorithm, along with a polynomial-time algorithm with approximation guarantees. Experimental results on synthetic and real-world datasets show that the data recovery rate is significantly enhanced compared with the previous 1-D matching algorithm.
加密数据库的数据推断:一种多维保序匹配方法
由于对数据隐私的担忧日益增加,在将数据库存储在不受信任的服务器上之前,它们正在被加密。为了实现对加密数据的搜索操作,提出了可搜索加密技术。代表性方案使用保序加密(OPE)来支持对加密数据库的高效布尔查询。然而,最近的研究表明,仅使用保持顺序的约束,或者与具有相似频率分布的辅助明文数据集相结合,就可以从ope加密的数据库中推断出明文数据。到目前为止,这种攻击的有效性仅限于单维密集数据(来自该领域的大多数值都是加密的),但在高维数据集(例如空间数据)上实现它仍然具有挑战性,这些数据集通常是稀疏的。本文首次研究了针对多维加密数据库(以二维数据库为特例)的数据推理攻击。我们将其表述为二维保序匹配问题,并探索了未加权和加权两种情况,其中前者仅使用阶信息最大化匹配点的数量,后者进一步考虑具有相似频率的点。我们证明了这个问题是np困难的,然后提出了一个贪心算法,以及一个具有近似保证的多项式时间算法。在合成数据集和真实数据集上的实验结果表明,与之前的一维匹配算法相比,该算法的数据恢复速度有了显著提高。
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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