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Fusion: Privacy-Preserving Distributed Protocol for High-Dimensional Data Mashup

机译:融合:高维数据混搭的隐私保护分布式协议

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In the last decade, several approaches concerning private data release for data mining have been proposed. Data mashup, on the other hand, has recently emerged as a mechanism for integrating data from several data providers. Fusing both techniques to generate mashup data in a distributed environment while providing privacy and utility guarantees on the output involves several challenges. That is, how to ensure that no unnecessary information is leaked to the other parties during the mashup process, how to ensure the mashup data is protected against certain privacy threats, and how to handle the high-dimensional nature of the mashup data while guaranteeing high data utility. In this paper, we present Fusion, a privacy-preserving multi-party protocol for data mashup with guaranteed LKC-privacy for the purpose of data mining. Experiments on real-life data demonstrate that the anonymous mashup data provide better data utility, the approach can handle high dimensional data, and it is scalable with respect to the data size.
机译:在过去的十年中,已经提出了几种有关用于数据挖掘的私有数据发布的方法。另一方面,数据混搭最近成为一种集成来自多个数据提供者的数据的机制。融合这两种技术以在分布式环境中生成mashup数据,同时在输出上提供隐私和实用程序保证涉及多个挑战。也就是说,如何确保在混搭过程中没有不必要的信息泄露给其他方;如何确保混搭数据受到某些隐私威胁的保护;如何在确保高安全性的前提下处理混搭数据的高维度性质数据实用程序。在本文中,我们提出了Fusion,这是一种用于数据混搭的隐私保护多方协议,具有保证LKC私密性以用于数据挖掘。对真实数据的实验表明,匿名混搭数据提供了更好的数据实用性,该方法可以处理高维数据,并且相对于数据大小具有可伸缩性。

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