Improved Technique for Preserving Privacy while Mining Real Time Big Data

Ila Chandrakar
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引用次数: 7

Abstract

With the evolution of Big data, data owners require the assistance of a third party (e.g.,cloud) to store, analyse the data and obtain information at a lower cost. However, maintaining privacy is a challenge in such scenarios. It may reveal sensitive information. The existing research discusses different techniques to implement privacy in original data using anonymization, randomization, and suppression techniques. But those techniques are not scalable, suffers from information loss, does not support real time data and hence not suitable for privacy preserving big data mining. In this research, a novel approach of two level privacy is proposed using pseudonymization and homomorphic encryption in spark framework. Several simulations are carried out on the collected dataset. Through the results obtained, we observed that execution time is reduced by 50%, privacy is enhanced by 10%. This scheme is suitable for both privacy preserving Big Data publishing and mining.
实时大数据挖掘中隐私保护的改进技术
随着大数据的发展,数据所有者需要第三方(如云)的协助,以较低的成本存储、分析数据并获取信息。然而,在这种情况下,维护隐私是一个挑战。它可能会泄露敏感信息。现有的研究讨论了使用匿名化、随机化和抑制技术来实现原始数据隐私的不同技术。但这些技术缺乏可扩展性,存在信息丢失、不支持实时数据等问题,不适合保护隐私的大数据挖掘。本文提出了一种在spark框架下使用假名和同态加密实现两级隐私的新方法。在收集的数据集上进行了多次模拟。通过获得的结果,我们观察到执行时间减少了50%,隐私性增强了10%。该方案既适用于保护隐私的大数据发布,也适用于数据挖掘。
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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