差别隐私
计算机科学
差速器(机械装置)
计算
功能(生物学)
安全多方计算
芯(光纤)
理论计算机科学
算法
电信
进化生物学
工程类
生物
航空航天工程
作者
Depeng Xu,Shuhan Yuan,Xintao Wu
标识
DOI:10.1109/bigdata52589.2021.9671502
摘要
Preserving differential privacy has been well studied under the centralized setting. However, it's very challenging to preserve differential privacy under multiparty setting, especially for the vertically partitioned case. In this work, we propose a new framework for differential privacy preserving multiparty learning in the vertically partitioned setting. Our core idea is based on the functional mechanism that achieves differential privacy of the released model by adding noise to the objective function. We show the server can simply dissect the objective function into single-party and cross-party sub-functionsa, and allocate computation and perturbation of their polynomial coefficients to local parties. Our method needs only one round of noise addition and secure aggregation. The released model in our framework achieves the same utility as applying the functional mechanism in the centralized setting. Evaluation on real-world and synthetic datasets for linear and logistic regressions shows the effectiveness of our proposed method.
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