Privacy Preserving Query Processing Using Third Parties

Fatih Emekçi, D. Agrawal, A. E. Abbadi, Aziz Gulbeden
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引用次数: 94

Abstract

Data integration from multiple autonomous data sources has emerged as an important practical problem. The key requirement for such data integration is that owners of such data need to cooperate in a competitive landscape in most of the cases. The research challenge in developing a query processing solution is that the answers to the queries need to be provided while preserving the privacy of the data sources. In general, allowing unrestricted read access to the whole data may give rise to potential vulnerabilities as well as may have legal implications. Therefore, there is a need for privacy preserving database operations for querying data residing at different parties. In this paper, we propose a new query processing technique using third parties in a peer-to-peer system. We propose and evaluate two different protocols for various database operations. Our scheme is able to answer queries without revealing any useful information to the data sources or to the third parties. Analytical comparison of the proposed approach with other recent proposals for privacy-preserving data integration establishes the superiority of the proposed approach in terms of query response time
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使用第三方保护隐私的查询处理
来自多个自治数据源的数据集成已经成为一个重要的实际问题。这种数据集成的关键要求是,在大多数情况下,这些数据的所有者需要在竞争环境中进行合作。开发查询处理解决方案的研究挑战在于,需要在提供查询答案的同时保留数据源的隐私性。一般来说,允许对整个数据进行不受限制的读取访问可能会产生潜在的漏洞,并可能产生法律影响。因此,有必要为查询驻留在不同方的数据而保留数据库操作的隐私。在本文中,我们提出了一种在点对点系统中使用第三方的查询处理技术。我们针对不同的数据库操作提出并评估了两种不同的协议。我们的方案能够在不向数据源或第三方泄露任何有用信息的情况下回答查询。将所提出的方法与最近提出的其他保护隐私的数据集成方法进行分析比较,发现所提出的方法在查询响应时间方面具有优势
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