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首页> 外文期刊>IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences >Scalable Privacy-Preserving Data Mining with Asynchronously Partitioned Datasets
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Scalable Privacy-Preserving Data Mining with Asynchronously Partitioned Datasets

机译:具有异步分区数据集的可扩展的隐私保护数据挖掘

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摘要

In the Naive Bayes classification problem using a vertically partitioned dataset, the conventional scheme to preserve privacy of each partition uses a secure scalar product and is based on the assumption that the data is synchronized amongst common unique identities. In this paper, we attempt to discard this assumption in order to develop a more efficient and secure scheme to perform classification with minimal disclosure of private data. Our proposed scheme is based on the work by Vaidya and Clifton [2], which uses commutative encryption to perform secure set intersection so that the parties with access to the individual partitions have no knowledge of the intersection. The evaluations presented in this paper are based on experimental results, which show that our proposed protocol scales well with large sparse datasets.
机译:在使用垂直划分的数据集的朴素贝叶斯分类问题中,用于保护每个分区的隐私的常规方案使用安全的标量积,并且基于数据在公共唯一标识之间同步的假设。在本文中,我们试图放弃该假设,以便开发出一种更有效,更安全的方案,以最少的私有数据披露来执行分类。我们提出的方案是基于Vaidya和Clifton [2]的工作,他们使用可交换加密来执行安全集合交集,因此可以访问各个分区的各方都不知道交集。本文中提出的评估是基于实验结果的,这表明我们提出的协议可以在大型稀疏数据集上很好地扩展。

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