云计算中大数据的隐私感知自适应数据加密策略

Keke Gai, Meikang Qiu, Hui Zhao, Jian Xiong
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引用次数: 81

摘要

随着大数据在云计算中的应用迅速发展,隐私问题已经成为一个相当大的问题。实现这些新兴技术的好处是改进或改变了服务模型,并从多个角度提高了应用程序的性能。然而,数据量的显著增长也在实践中带来了许多挑战。加密数据的执行时间是数据处理和传输过程中的重要问题之一。许多当前的应用程序为了达到可采用的性能水平而放弃了数据加密,同时也考虑到了隐私问题。本文主要针对隐私问题,提出了一种新的数据加密方法——动态数据加密策略(D2ES)。我们提出的方法旨在在时间约束下使用隐私分类方法选择性地加密数据。该方法旨在通过在所需的执行时间要求内使用选择性加密策略来最大化隐私保护范围。我们的实验对D2ES的性能进行了评估,为隐私增强提供了证据。
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Privacy-Aware Adaptive Data Encryption Strategy of Big Data in Cloud Computing
Privacy issues have become a considerable issue while the applications of big data are growing dramatically fast in cloud computing. The benefits us implementing these emerging technologies have improved or changed service models and improve application performances in various perspectives. However, the remarkably growing volume of data sizes has also resulted in many challenges in practice. The time execution of encrypting data is one of the serious issues during the processes of data processing and transmissions. Many current applications abandon data encryptions in order to reach an adoptive performance level, companions with privacy concerns. In this paper, we concentrate on privacy issue and propose a novel data encryption approach, named as Dynamic Data Encryption Strategy (D2ES). Our proposed approach aims to selectively encrypt data using privacy classification methods under timing constraints. This approach is designed to maximize the privacy protection scope by using a selective encryption strategy within the required execution time requirements. The performance of D2ES has been evaluated in our experiments, which provides the proof of the privacy enhancement.
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