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Privacy preserving distributed data mining based on secure multi-party computation

机译:基于安全多方计算的隐私保留分布式数据挖掘

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摘要

Data mining is an important task to understand the valuable information for making correct decisions. Technologies for mining self-owned data of a party are rather mature. However, how to perform distributed data mining to obtain information from data owned by multiple parties without privacy leakage remains a big challenge. While secure multi-party computation (MPC) may potentially address this challenge, several issues have to be overcome for practical realizations. In this paper, we point out two unsupported tasks of MPC that are common in the real-world. Towards this end, we design algorithms based on optimized matrix computation with one-hot encoding and LU decomposition to support these requirements in the MPC context. In addition, we implement them based on a SPDZ protocol, a computation framework of MPC. The experimental evaluation results show that our design and implementation are feasible and effective for privacy preserving distributed data mining.
机译:数据挖掘是理解正确决策的宝贵信息的重要任务。用于挖掘一方的自有数据的技术相当成熟。但是,如何执行分布式数据挖掘,以获取无需隐私泄漏所拥有的多方数据所拥有的信息仍然是一个很大的挑战。虽然安全的多方计算(MPC)可能会解决这一挑战,但必须为实际实现来克服几个问题。在本文中,我们指出了在现实世界中常见的两个不支持的MPC任务。为此,我们使用单热编码和LU分解来设计基于优化矩阵计算的算法,以支持MPC上下文中的这些要求。此外,我们基于SPDZ协议,MPC的计算框架实现它们。实验评估结果表明,我们的设计和实施对于隐私保留分布式数据挖掘是可行的和有效的。

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