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Privacy Preserving Aggregate Query of OLAP for Accurate Answers

机译:用于精确答案的olap聚合查询隐私

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—In recent years, privacy protection has become an important topic when cooperative computation is performed in distributed environments. This paper puts forward efficient protocols for computing the multi-dimensional aggregates in distributed environments while keeping privacy preserving. We propose a novel model, which contains two crucial stages: local computation and cooperative computation based on secure multiparty computation protocols for privacy-preserving on-line analytical processing. According to the new model, we develop approaches to privacy-preserving count aggregate query over both horizontally partitioned data and vertically partitioned data. We, meanwhile, propose an efficient sub-protocol Two-Round Secure Sum Protocol. Theoretical analysis indicates that our solutions are secure and the answers are exactly accurate, that is, they can securely obtain the exact answer to aggregate query without revealing anything about their confidential data to each other. We also analyze detailedly the communication cost and computation complexity of our schemes in the paper and it shows that the new solutions have good linear complexity. No privacy loss and exact accuracy are two main significant advantages of our new schemes.
机译:- 近年来,当在分布式环境中执行合作计算时,隐私保护已成为一个重要的主题。本文提出了用于计算分布式环境中的多维聚集体的高效协议,同时保留隐私保留。我们提出了一种新颖的模型,其中包含两个关键阶段:基于安全多方计算协议的本地计算和协作计算,用于保护在线分析处理。根据新模型,我们开发了在水平分区数据和垂直分区数据上的隐私保留计数聚合查询的方法。同时,我们提出了一种有效的子协议两轮安全和协议。理论分析表明,我们的解决方案是安全的,答案完全准确,即它们可以安全地获得聚合查询的确切答案,而不会对他们的机密数据彼此揭示任何内容。我们还分析了本文中我们计划的通信成本和计算复杂性,并显示新的解决方案具有良好的线性复杂性。没有隐私损失和精确的准确性是我们新计划的两个主要优势。

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