Privacy - preserving top-k queries

Jaideep Vaidya, Chris Clifton
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引用次数: 77

Abstract

The primary contribution of this paper is a secure method for doing top-k selection from vertically partitioned data. This has particular relevance to privacy-sensitive searches, and meshes well with privacy policies such as k-anonymity. We have demonstrated how secure primitives from the literature can be composed with efficient query processing algorithms, with the result having provable security properties. The paper also shows a trade-off between efficiency and disclosure. It is worth exploring whether one could have a suite of algorithms to optimize these tradeoffs, e.g., algorithms that guarantee k-anonymity with efficiency based on the choice of k rather than the guarantees of secure multiparty computation.
保护隐私的top-k查询
本文的主要贡献是一种从垂直分区数据中进行top-k选择的安全方法。这与隐私敏感搜索特别相关,并且与k-匿名等隐私政策非常吻合。我们已经演示了如何将文献中的安全原语与高效的查询处理算法组合在一起,其结果具有可证明的安全属性。这篇论文还展示了效率与信息披露之间的权衡。值得探索的是,是否可以有一套算法来优化这些权衡,例如,基于k的选择而不是安全多方计算的保证,以效率保证k-匿名的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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