大数据谱系:分布式环境中数据驱动的大数据隐私

A. Cuzzocrea, E. Damiani
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引用次数: 10

摘要

本文介绍了一个通用框架,用于支持分布式环境(如新兴的云环境)中数据驱动的隐私保护大数据管理。所提出的框架可以被视为经典方法的替代方案,其中通过安全启发的协议来确保大数据的隐私,该协议检查多个(协议)层,以实现所需的隐私。不幸的是,这在整个过程中注入了相当大的计算开销,因此引入了需要考虑的相关挑战。相反,我们的方法试图识别在目标大数据存储库之上计算的合适汇总数据代表的“谱系”,从而避免了由于协议检查而产生的计算开销。我们还提供了上述框架的相关实现,即所谓的数据驱动聚合-来源隐私保护大多维数据(DRIPROM)框架,该框架特别考虑了多维数据作为感兴趣的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pedigree-ing Your Big Data: Data-Driven Big Data Privacy in Distributed Environments
This paper introduces a general framework for supporting data-driven privacy-preserving big data management in distributed environments, such as emerging Cloud settings. The proposed framework can be viewed as an alternative to classical approaches where the privacy of big data is ensured via security-inspired protocols that check several (protocol) layers in order to achieve the desired privacy. Unfortunately, this injects considerable computational overheads in the overall process, thus introducing relevant challenges to be considered. Our approach instead tries to recognize the "pedigree" of suitable summary data representatives computed on top of the target big data repositories, hence avoiding computational overheads due to protocol checking. We also provide a relevant realization of the framework above, the so-called Data-dRIven aggregate-PROvenance privacypreserving big Multidimensional data (DRIPROM) framework, which specifically considers multidimensional data as the case of interest.
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