普罗米修斯:混合云上的隐私感知数据检索

Zhigang Zhou, Hongli Zhang, Xiaojiang Du, Panpan Li, Xiangzhan Yu
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引用次数: 69

摘要

随着云计算的出现,数据所有者被激励将他们的数据外包给云平台,以获得极大的灵活性和经济节约。然而,数据隐私问题阻碍了这一发展:数据所有者可能拥有隐私数据,而数据不能直接外包给云。以前的解决方案主要使用加密。但是,加密会给其他数据操作(如搜索和查询)带来很多不便和大量开销。为了应对这一挑战,我们采用了混合云。在本文中,我们提出了一套新的技术来实现高效的隐私感知数据检索。其基本思想是拆分数据,将敏感数据保存在可信的私有云中,而将不敏感数据移动到公共云。然而,当前的框架并不支持混合云上的隐私感知数据检索。数据所有者必须手动分割数据。我们的系统名为Prometheus,采用流行的MapReduce框架,并使用独立于特定应用程序的数据分区策略。Prometheus可以自动将敏感信息与公共数据分离。我们正式证明了Prometheus的隐私保护特性。我们还表明,除了半诚实云模型之外,我们的方案还可以防御恶意云模型。我们在Hadoop上实现Prometheus,并在大规模云测试平台上使用真实数据集评估其性能。大量的实验证明了该方案的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prometheus: Privacy-aware data retrieval on hybrid cloud
With the advent of cloud computing, data owner is motivated to outsource their data to the cloud platform for great flexibility and economic savings. However, the development is hampered by data privacy concerns: Data owner may have privacy data and the data cannot be outsourced to cloud directly. Previous solutions mainly use encryption. However, encryption causes a lot of inconveniences and large overheads for other data operations, such as search and query. To address the challenge, we adopt hybrid cloud. In this paper, we present a suit of novel techniques for efficient privacy-aware data retrieval. The basic idea is to split data, keeping sensitive data in trusted private cloud while moving insensitive data to public cloud. However, privacy-aware data retrieval on hybrid cloud is not supported by current frameworks. Data owners have to split data manually. Our system, called Prometheus, adopts the popular MapReduce framework, and uses data partition strategy independent to specific applications. Prometheus can automatically separate sensitive information from public data. We formally prove the privacy-preserving feature of Prometheus. We also show that our scheme can defend against the malicious cloud model, in addition to the semi-honest cloud model. We implement Prometheus on Hadoop and evaluate its performance using real data set on a large-scale cloud test-bed. Our extensive experiments demonstrate the validity and practicality of the proposed scheme.
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