NTP-VFL - A New Scheme for Non-3rd Party Vertical Federated Learning

Di Zhao, Ming Yao, Wanwan Wang, Hao He, Xin Jin
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引用次数: 3

Abstract

Vertical Federated Learning (FL) handles decentralized and partitioned vertically data about common entities. While most existing privacy-preserving federated learning algorithms require a third party (TP) as an intermediary data accessor to coordinate model training, we propose a new private-preserving scheme named NTP-VFL (Non-3rd Party Vertical Federated Learning). Utilizing Paillier homomorphic encryption, our algorithm strategy allows for multi-party model training and guarantees clients’ privacy against honest-but-curious adversaries. To the best of our knowledge, this is the first non- TP method that solves multi-party computation problems in Logistic Regression tasks. Our theoretical analysis and extensive experiments show outstanding performance with an average increase in efficiency of about 25% baselines with the traditional federated learning approach.
NTP-VFL——一种非第三方垂直联邦学习的新方案
垂直联邦学习(FL)处理关于公共实体的分散和分区的垂直数据。虽然大多数现有的隐私保护联邦学习算法需要第三方(TP)作为中间数据访问器来协调模型训练,但我们提出了一种新的隐私保护方案,称为NTP-VFL(非第三方垂直联邦学习)。利用Paillier同态加密,我们的算法策略允许多方模型训练,并保证客户的隐私免受诚实但好奇的对手的侵害。据我们所知,这是第一个解决逻辑回归任务中多方计算问题的非TP方法。我们的理论分析和广泛的实验表明,传统的联邦学习方法的效率平均提高了25%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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