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Efficient privacy preservation of big data for accurate data mining

机译:高效隐私保存大数据的准确数据挖掘

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Computing technologies pervade physical spaces and human lives, and produce a vast amount of data that is available for analysis. However, there is a growing concern that potentially sensitive data may become public if the collected data are not appropriately sanitized before being released for investigation. Although there are more than a few privacy-preserving methods available, they are not efficient, scalable, or have problems with data utility, or privacy. This paper addresses these issues by proposing an efficient and scalable nonreversible perturbation algorithm, PABIDOT, for privacy preservation of big data via optimal geometric transformations. PABIDOT was tested for efficiency, scalability, attack resistance, and accuracy using nine datasets and five classification algorithms. Experiments show that PABIDOT excels in execution speed, scalability, attack resistance, and accuracy in large-scale privacy-preserving data classification when compared with two other, related privacy-preserving algorithms. (C) 2019 Elsevier Inc. All rights reserved.
机译:计算技术遍及物理空间和人类生活,并产生大量可用于分析的数据。但是,如果收集的数据在被释放以进行调查之前,则越来越多的令人担忧的担忧可能会成为公开的。虽然有多种隐私保留方法可用,但它们并不高效,可扩展,或具有数据实用程序或隐私的问题。本文通过提出高效且可扩展的非可扰动算法,Pabidot,通过最佳几何变换提出了对大数据的隐私保存来解决这些问题。使用九个数据集和五种分类算法测试了效率,可伸缩性,攻击阻力和准确性的效率,可伸缩性,攻击阻力和准确性。实验表明,与另外两个相关的隐私保留算法相比,Pabidot在大规模隐私保留数据分类中的执行速度,可扩展性,攻击阻力和准确性。 (c)2019 Elsevier Inc.保留所有权利。

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