利用高效匿名化技术保护大数据隐私

Fahad Ahamd
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引用次数: 0

摘要

由于数据量的增加,大数据需要保密。数据是从社交网络、组织和各种其他方式产生的,这被称为大数据。大数据需要大的存储空间和高的计算能力。在每个阶段,都需要保护数据。隐私保护在保护敏感信息免受任何攻击方面发挥着重要作用。数据匿名化是对数据进行匿名化以保持其私密性和受保护的技术之一,包括抑制、泛化和分类。它使个人和私人数据保持匿名,不被其他人知道。但在大数据上实施时,这些技术造成了很大的信息丢失,也无法保护大数据的隐私。此外,对于大数据场景,匿名化不仅要关注隐藏,还要关注其他方面。本文旨在提供一种将切片、抑制和功能加密相结合的技术,通过数据匿名化来实现更好的大数据隐私。
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Preservation of Privacy of Big Data Using Efficient Anonymization Technique
Big data needs to be kept private because of the increase in the amount of data. Data is generated from social networks, organizations and various other ways, which is known as big data. Big data requires large storage as well as high computational power. At every stage, the data needs to be protected. Privacy preservation plays an important role in keeping sensitive information protected and private from any attack. Data anonymization is one of the techniques to anonymize data to keep it private and protected, which includes suppression, generalization, and bucketization. It keeps personal and private data anonymous from being known by others. But when it is implemented on big data, these techniques cause a great loss of information and also fail in defense of the privacy of big data. Moreover, for the scenario of big data, the anonymization should not only focus on hiding but also on other aspects. This paper aims to provide a technique that uses slicing, suppression, and functional encryption together to achieve better privacy of big data with data anonymization.
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