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An Efficient and Robust System for Vertically Federated Random Forest

Authors :
Yao, Houpu
Wang, Jiazhou
Dai, Peng
Bo, Liefeng
Chen, Yanqing
Publication Year :
2022

Abstract

As there is a growing interest in utilizing data across multiple resources to build better machine learning models, many vertically federated learning algorithms have been proposed to preserve the data privacy of the participating organizations. However, the efficiency of existing vertically federated learning algorithms remains to be a big problem, especially when applied to large-scale real-world datasets. In this paper, we present a fast, accurate, scalable and yet robust system for vertically federated random forest. With extensive optimization, we achieved $5\times$ and $83\times$ speed up over the SOTA SecureBoost model \cite{cheng2019secureboost} for training and serving tasks. Moreover, the proposed system can achieve similar accuracy but with favorable scalability and partition tolerance. Our code has been made public to facilitate the development of the community and the protection of user data privacy.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.10761
Document Type :
Working Paper