Private Substring Search on Homomorphically Encrypted Data

Yu Ishimaki, Hiroki Imabayashi, H. Yamana
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引用次数: 11

Abstract

With the rapid development of cloud storage services and IoT environment, how to securely and efficiently search without compromising privacy has been an indispensable problem. In order to address such a problem, much works have been proposed for searching over encrypted data. Motivated by storing sensitive data such as genomic and medical data, substring search for encrypted data has been studied. Previous work either leaks query access pattern using vulnerable cryptographic model or performs search over plaintext data by an encrypted query. Thus they are not compatible with outsourcing scenario where searched data is stored in encrypted form which is searched by an encrypted substring query without leaking query access pattern, i.e., private substring search. In order to perform private substring search, Fully Homomorphic Encryption (FHE) can be adopted although it induces computationally huge overhead. Because of the huge overhead, performing private substring search efficiently over FHE is a challenging task. In this work, we propose a private substring search protocol over encrypted data by adopting FHE followed by examining its feasibility. In particular, we make use of batching technique which can accelerate homomorphic computation in SIMD manner. In addition, we propose a data structure which can be useful to specific searching function for batched computation. Our experimental result showed our proposed method is feasible.
同态加密数据的私有子串搜索
随着云存储服务和物联网环境的快速发展,如何在不损害隐私的情况下安全高效地进行搜索已成为一个不可或缺的问题。为了解决这一问题,人们提出了许多对加密数据进行搜索的工作。出于存储敏感数据(如基因组和医疗数据)的动机,对加密数据的子字符串搜索进行了研究。以前的工作要么使用易受攻击的加密模型泄露查询访问模式,要么通过加密查询对明文数据进行搜索。因此,它们不兼容以加密形式存储搜索数据的外包场景,该场景通过加密的子字符串查询进行搜索,而不会泄漏查询访问模式,即私有子字符串搜索。为了进行私有子串搜索,可以采用完全同态加密(Fully Homomorphic Encryption, FHE),尽管它会带来巨大的计算开销。由于巨大的开销,在FHE上高效地执行私有子字符串搜索是一项具有挑战性的任务。在这项工作中,我们通过采用FHE提出了一种加密数据的私有子字符串搜索协议,并研究了其可行性。特别地,我们利用了批处理技术,可以加速SIMD方式下的同态计算。此外,我们还提出了一种数据结构,可以用于批量计算的特定搜索函数。实验结果表明,该方法是可行的。
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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