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Securing Big Data Efficiently through Microaggregation Technique

机译:通过微型聚格技术有效地保护大数据

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Cyber-Physical Systems (CPS) requires big data communications as well as integration from several distributed sources. This data can usually be interconnected with physical applications, such as power grids or SCADA systems. In addition, it can be publicly accessible for using by third party users or data scientists. Therefore, it becomes imperative to ensure that this big data is well secured. Microaggregation is an widely used technique to protect a dataset through anonymity in order to prevent exposure of a person's identity. This data disclosure may also result from an unpredicted data linkage with another dataset. As, most of these survey datasets store records using numerical values, many of the microaggregation techniques are developed and tested on numerical data. These algorithms are not suitable for those data where both numerical and categorical data are stored. In this paper we're proposing a microaggregation technique in order to provide data anonymity regardless of its type. The records are clustered into several groups using an evolutionary attribute grouping algorithm and each group records are then microaggregated applying Huffman data compression algorithm.
机译:网络物理系统(CPS)需要大数据通信以及从几个分布式源的集成。此数据通常可以与物理应用互连,例如电网或SCADA系统。此外,它还可以通过第三方用户或数据科学家公开访问。因此,必须确保这种大数据确保很好。微见是一种广泛使用的技术,可以通过匿名保护数据集以防止曝光一个人的身份。该数据公开还可以由未预测的数据链接与另一个数据集来引起。如,大多数这些调查数据集存储了使用数值的记录,在数值数据上开发和测试了许多微磁性技术。这些算法不适用于存储两个数值和分类数据的数据。在本文中,我们提出了一种微见技术,以便提供数据匿名,而不管其类型如何。使用进化属性分组算法将记录聚集成几个组,然后每个组记录是微见的应用Huffman数据压缩算法。

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