Privacy Preserving Big Data Publishing

Yavuz Canbay, Yilmaz Vural, Ş. Sağiroğlu
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引用次数: 5

Abstract

In order to gain more benefits from big data, they must be shared, published, analyzed and processed without having any harm or facing any violation and finally get better values from these analytics. The literature reports that this analytics brings an issue of privacy violations. This issue is also protected by law and bring fines to the companies, institutions or individuals. As a result, data collectors avoid to publish or share their big data due to these concerns. In order to obtain plausible solutions, there are a number of techniques to reduce privacy risks and to enable publishing big data while preserving privacy at the same time. These are known as privacy-preserving big data publishing (PPBDP) models. This study presents the privacy problem in big data, evaluates big data components from privacy perspective, privacy risks and protection methods in big data publishing, and reviews existing privacy-preserving big data publishing approaches and anonymization methods in literature. The results were finally evaluated and discussed, and new suggestions were presented.
隐私保护大数据出版
为了从大数据中获得更多的利益,必须在没有任何伤害或违反的情况下进行共享、发布、分析和处理,并最终从这些分析中获得更好的价值。文献报道,这种分析带来了侵犯隐私的问题。这一问题也受到法律保护,并对公司、机构或个人处以罚款。因此,由于这些担忧,数据收集者避免发布或分享他们的大数据。为了获得合理的解决方案,有许多技术可以降低隐私风险,并在保护隐私的同时发布大数据。这些被称为保护隐私的大数据发布(PPBDP)模型。本研究提出了大数据中的隐私问题,从隐私角度对大数据组成部分、大数据发布中的隐私风险和保护方法进行了评估,并对文献中现有的保护隐私的大数据发布方式和匿名化方法进行了综述。最后对结果进行了评价和讨论,并提出了新的建议。
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