用于外包云数据的实用且有隐私保障的数据索引

Hongli Zhang, Zhigang Zhou, Xiaojiang Du, Panpan Li, Xiangzhan Yu
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引用次数: 4

摘要

由于灵活性和成本节约,云计算允许个人和组织将其数据外包给云服务器。然而,数据隐私是阻碍云服务广泛采用的一个主要问题。数据加密确保数据内容的保密性,细粒度的数据访问控制防止未经授权的用户访问数据。未经授权的用户仍然可以通过使用索引技术从加密数据推断隐私信息。本文研究了这两种技术正交使用引起的敏感信息泄漏问题。在此基础上,提出了“核心属性”感知技术,确保外包数据的隐私性。这些技术侧重于外包数据的机密属性集。我们对属性索引采用k-匿名技术,防止用户从未经授权的数据中推断隐私。我们正式证明了所提出机制的隐私保护保证。我们的大量实验证明了该机制的实用性,该机制具有较低的计算和通信开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical and privacy-assured data indexes for outsourced cloud data
Cloud computing allows individuals and organizations outsource their data to cloud server due to the flexibility and cost savings. However, data privacy is a major concern that hampers the wide adoption of cloud services. Data encryption ensures data content confidentiality and fine-grained data access control prevents unauthorized user from accessing data. An unauthorized user may still be able to infer privacy information from encrypted data by using indexing techniques. In this paper, we investigate the problem of sensitive information leakage caused by orthogonal use of these two kinds of techniques. Based on that, we propose “core attribute”-aware techniques that can ensure privacy of outsourced data. The techniques focus on confidential attribute set of outsourced data. We adopt k-anonymity technique for the attribute indexes to prevent user from inferring privacy from unauthorized data. We formally prove the privacy-preserving guarantee of the proposed mechanism. Our extensive experiments demonstrate the practicality of the proposed mechanism, which has low computation and communication overhead.
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