Towards a Hybrid Data Partitioning Technique for Secure Data Outsourcing

Sultan Badran, N. Arman, Mousa Farajallah
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引用次数: 2

Abstract

In light of the progress achieved by the technology sector in the areas of internet speed and cloud services development, and in addition to other advantages provided by the cloud such as reliability and easy access from anywhere and anytime, most data owners find an opportunity to take advantage of the cloud to store data. However, data owners find a challenge that was and is still facing them in the field of outsourcing, which is protecting sensitive data from leakage. Researchers found that partitioning data into partitions, based on data sensitivity, can be used to protect data from leakage and to increase performance by storing the partition, which contains sensitive data in an encrypted form. In this paper, we review the methods used in designing partitions and dividing data approaches. A hybrid data partitioning approach is proposed to improve these techniques. We consider the frequency attack types used to guess the sensitive data and the most important properties that must be available in order for the encryption to be strong against frequency attacks.
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面向安全数据外包的混合数据分区技术研究
鉴于技术部门在互联网速度和云服务发展方面取得的进展,以及云提供的其他优势,如可靠性和随时随地方便访问,大多数数据所有者都发现了利用云存储数据的机会。然而,数据所有者发现,在外包领域,保护敏感数据免遭泄露是他们过去和现在仍然面临的挑战。研究人员发现,基于数据敏感性将数据划分为多个分区,可用于保护数据免受泄漏,并通过以加密形式存储包含敏感数据的分区来提高性能。在本文中,我们回顾了用于设计分区和划分数据方法的方法。提出了一种混合数据划分方法来改进这些技术。我们考虑了用于猜测敏感数据的频率攻击类型和最重要的属性,这些属性必须可用,以便加密能够抵御频率攻击。
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