Secure Logistic Regression for Vertical Federated Learning

Daojing He, Runmeng Du, Shanshan Zhu, Min Zhang, Kaitai Liang, Sammy Chan

Research output: Contribution to journalArticleScientificpeer-review

7 Citations (Scopus)
286 Downloads (Pure)

Abstract

Data island effectively blocks the practical application of machine learning. To meet this challenge, a new framework known as federated learning was created. It allows model training on a large amount of scattered data owned by different data providers. This article presents a parallel solution for computing logistic regression based on distributed asynchronous task framework. Compared to the existing work, our proposed solution does not rely on any third-party coordinator, and hence has better security and can solve the multitraining problem. The logistic regression based on homomorphic encryption is implemented in Python, which is used for vertical federated learning and prediction of the resulting model. We evaluate the proposed solution using the MNIST dataset, and the experimental results show that good performance is achieved.

Original languageEnglish
Pages (from-to)61-68
Number of pages8
JournalIEEE Internet Computing
Volume26
Issue number2
DOIs
Publication statusPublished - 2022

Keywords

  • Collaborative work
  • Computational modeling
  • Data models
  • Federated learning
  • homomorphic encryption
  • logistic regression
  • Logistics
  • multiparty privacy computation
  • Protocols
  • Security
  • Training

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