论文标题
联合坐标的坐标下降用于隐私多方线性回归
Federated Coordinate Descent for Privacy-Preserving Multiparty Linear Regression
论文作者
论文摘要
分布式隐私的回归方案已在各个领域开发和扩展,在各个领域中,多阶层协作和私人运行优化算法,例如梯度下降,以学习一组最佳参数。但是,传统的基于梯度的方法无法解决包含L1正则化的客观功能(例如Lasso回归)的问题。在本文中,我们介绍了一种称为FCD的新分布式方案联合坐标下降,以在多方方案下安全地解决此问题。具体而言,通过安全的聚合并增加了扰动,我们的方案确保:(1)没有向其他方泄漏本地信息,并且(2)全局模型参数不会暴露于云服务器。最终,各方可以消除附加的扰动,以得出具有高性能的全球模型。我们表明,FCD方案填补了多方安全坐标下降方法的空白,并且适用于一般线性回归,包括线性,脊和Lasso回归。理论安全分析和实验结果表明,可以有效,有效地执行FCD,并在三种类型的现实世界UCI数据集的线性回归的任务下,以低MAE度量为集中方法。
Distributed privacy-preserving regression schemes have been developed and extended in various fields, where multiparty collaboratively and privately run optimization algorithms, e.g., Gradient Descent, to learn a set of optimal parameters. However, traditional Gradient-Descent based methods fail to solve problems which contains objective functions with L1 regularization, such as Lasso regression. In this paper, we present Federated Coordinate Descent, a new distributed scheme called FCD, to address this issue securely under multiparty scenarios. Specifically, through secure aggregation and added perturbations, our scheme guarantees that: (1) no local information is leaked to other parties, and (2) global model parameters are not exposed to cloud servers. The added perturbations can eventually be eliminated by each party to derive a global model with high performance. We show that the FCD scheme fills the gap of multiparty secure Coordinate Descent methods and is applicable for general linear regressions, including linear, ridge and lasso regressions. Theoretical security analysis and experimental results demonstrate that FCD can be performed effectively and efficiently, and provide as low MAE measure as centralized methods under tasks of three types of linear regressions on real-world UCI datasets.