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Preserving privacy of outsourced data: A cluster-based approach

机译:保护外包数据的隐私:基于集群的方法

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摘要

With increasing opportunities for cheaper outsourcing of data, more and more organizations are seriously considering this option to reduce storage and processing costs. However, it has also given rise to the possibilities of security and privacy violations of data in outsourced environments. In this paper, we look at the privacy aspect, often referred to as data confidentiality. Our solution employs partitioning of the data into fragments (horizontal and vertical) so that only that group of fragments which do not violate the privacy are outsourced and the remaining are retained by the owner. The primary objective of the partitioning algorithm is to maximize the size of the outsourced fragment. Since obtaining optimal fragments that satisfy the privacy constraints is NP-hard, we suggest the use of clustering algorithms to provide near-optimal solutions. We provide proof of correctness for the proposed algorithm. We illustrate the proposed scheme using an example and show its efficacy.
机译:随着廉价数据外包的机会越来越多,越来越多的组织正在认真考虑采用这种选择来降低存储和处理成本。但是,这也增加了外包环境中数据的安全性和隐私侵犯的可能性。在本文中,我们着眼于隐私方面,通常称为数据机密性。我们的解决方案采用将数据划分为片段(水平和垂直)的方式,以便仅将不违反隐私的片段组外包,其余部分由所有者保留。分区算法的主要目的是最大化外包片段的大小。由于获得满足隐私约束的最佳片段是NP困难的,因此我们建议使用聚类算法来提供接近最佳的解决方案。我们为提出的算法提供了正确性证明。我们通过一个例子来说明所提出的方案并显示其有效性。

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