基于隐私保护的云外包加密数据的高效查询处理

Purushothama B, B. B. Amberker
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引用次数: 10

摘要

数据外包到公共云面临着几个安全挑战。确保外包敏感数据的保密性对于采用公共云进行数据外包至关重要。通常,云存储服务器是不可信的。采用加密方法维护外包数据的机密性。对加密数据执行查询是一项具有挑战性的任务。攻击者除了通过观察查询和查询响应获得的最小信息外,不应该获得任何重要信息。在这项工作中,我们提供了两种有效的解决方案来处理对加密数据的查询。我们专注于在不损害数据和查询隐私的情况下提高查询处理的性能。我们表明,除了无法避免的最小信息外,攻击者无法获得关于数据的重要信息。我们进行了实证绩效评估,并与文献中可用的方案进行了比较。实验表明,与现有方案相比,本文提出的方案是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Query Processing on Outsourced Encrypted Data in Cloud with Privacy Preservation
Data outsourcing on to the public cloud faces several security challenges. Ensuring the confidentiality of the outsourced sensitive data is of paramount importance for the adoption of public cloud for data outsourcing. Often the cloud storage servers are untrusted. Encryption method is used for maintaining the confidentiality of the outsourced data. Performing the queries on the encrypted data is a challenging task. Adversary should not gain any significant information other than the minimal information by observing the queries and the query responses. In this work, we provide two solutions which are efficient in processing the queries on the encrypted data. We focus on improving the performance of the query processing without compromising the privacy of the data and the queries. We show that adversary can gain no significant information about the data other than the minimal information which cannot be avoided. We conduct the empirical performance evaluations and compare with the scheme available in the literature. Our experiments show that the proposed schemes are efficient in comparison with the existing scheme.
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