通过隐私同态处理不可信数据云上的私有查询

Haibo Hu, Jianliang Xu, C. Ren, Byron Choi
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引用次数: 279

摘要

同时保护所有者的数据隐私和客户端的查询隐私的查询处理是一个新的研究问题。随着云计算推动越来越多的企业将其数据和查询服务外包,它显示出越来越重要的意义。然而,现有的大多数研究,包括数据外包的研究,都将数据隐私和查询隐私分开处理,无法适用于该问题。在本文中,我们提出了一个完整而高效的解决方案,该方案包括一个安全遍历框架和一个基于隐私同态的加密方案。通过利用基于索引的方法,该框架可扩展到大型数据集。基于这个框架,我们设计了安全协议来处理典型的查询,如r树索引上的k近邻查询(kNN)。此外,还提出了几种优化技术来提高查询处理协议的效率。理论分析和性能研究验证了我们的解决方案。
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Processing private queries over untrusted data cloud through privacy homomorphism
Query processing that preserves both the data privacy of the owner and the query privacy of the client is a new research problem. It shows increasing importance as cloud computing drives more businesses to outsource their data and querying services. However, most existing studies, including those on data outsourcing, address the data privacy and query privacy separately and cannot be applied to this problem. In this paper, we propose a holistic and efficient solution that comprises a secure traversal framework and an encryption scheme based on privacy homomorphism. The framework is scalable to large datasets by leveraging an index-based approach. Based on this framework, we devise secure protocols for processing typical queries such as k-nearest-neighbor queries (kNN) on R-tree index. Moreover, several optimization techniques are presented to improve the efficiency of the query processing protocols. Our solution is verified by both theoretical analysis and performance study.
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