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Multi-party Security Computation with Differential Privacy over Outsourced Data

机译:对外包数据具有不同保密性的多方安全计算

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Differential privacy has received considerable attention for privacy-preserving machine learning applications. In particular, in the cloud computing environment, data are outsourced from different users. Processing outsourced computations on the joint distribution of multiparty's data under multiple public keys with differential privacy is a significant and difficult problem. In this paper, we propose a scheme named 1, multi-party security computation with differential privacy over outsourced data (MSCD) by using a combination of public-key encryption with a double decryption algorithm (DD-PKE) and e-differential privacy to solve this problem. In our work, the cloud server adds the corresponding different statistical noises according to different queries of the data analyst, which differs from previous works in which noise is added by the data provider. In the random oracle model, our scheme is proven to achieve the goal of outsourced computation on the data sets of multiple parties without privacy leakage.
机译:在保护隐私的机器学习应用程序中,差异性隐私已经引起了广泛的关注。特别是在云计算环境中,数据是从不同的用户外包的。在具有不同隐私性的多个公共密钥下,处理多方数据的联合分发中的外包计算是一个重大而困难的问题。在本文中,我们通过结合使用公钥加密和双解密算法(DD-PKE)和电子差分隐私,提出了一种名为1的多方安全性计算,该协议在外包数据(MSCD)上具有差分隐私。解决这个问题。在我们的工作中,云服务器根据数据分析人员的不同查询添加相应的不同统计噪声,这与以前的工作由数据提供者添加噪声不同。在随机预言机模型中,我们的方案被证明可以实现对多方数据集进行外包计算的目标,而不会造成隐私泄漏。

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