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An efficient method for privacy preserving data mining in secure multiparty computation

机译:在安全多方计算中的隐私保留数据挖掘的有效方法

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Secure multiparty computation allows multiple parties to participate in a computation. SMC (secure multiparty computation) assumes n parties where n>1. All the parties jointly compute a function. Privacy preserving data mining has become an emerging field in the secure multiparty computation. Privacy preserving data mining preserves the privacy of individual's data. Privacy preserving data mining outputs have the property that the only information learned by the different parties is only the output of the algorithm. In this paper, we discuss an innovative protocol. This protocol uses both actual and idyllic model. By using both the models, we are providing more security and privacy. We break the data blocks into segments and redistribute the segments among all the parties. The key idea is that, whatever computed by a party participating in the protocol, computation based on its input and output only. This is a scenario where it is impossible to know the private data of some other party.
机译:安全多派计算允许多方参与计算。 SMC(安全多方计算)假定n> 1的派对。所有各方共同计算职能。隐私保留数据挖掘已成为安全多方计算中的新兴领域。隐私保留数据挖掘保留个人数据的隐私。隐私保留数据挖掘输出具有不同各方学习的唯一信息的属性只是算法的输出。在本文中,我们讨论了一种创新的协议。该协议使用实际和田园诗般的模型。通过使用两个模型,我们提供了更多的安全性和隐私。我们将数据块打破到段中,并重新分配各方之间的细分。关键的想法是,无论由参与协议的一方计算的什么,基于其输入和输出计算。这是一个方案,无法了解一些其他方的私人数据。

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