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Homomorphic ReLU with Full-Domain Bootstrapping

  • Yuqun Lin
  • , Yi Huang
  • , Xiaomeng Tang
  • , Jingjing Fan*
  • , Qifei Xu
  • , Zoe Lin Jiang
  • , Xiaosong Zhang
  • , Junbin Fang
  • *Corresponding author for this work
  • University of Electronic Science and Technology of China
  • Harbin Institute of Technology
  • The University of Hong Kong
  • Jinan University

Research output: Contribution to journalArticlepeer-review

Abstract

Fully homomorphic encryption (FHE) offers a promising solution for privacy-preserving machine learning by enabling arbitrary computations on encrypted data. However, the efficient evaluation of non-linear functions—such as the ReLU activation function over large integers—remains a major obstacle in practical deployments, primarily due to high bootstrapping overhead and limited precision support in existing schemes. In this paper, we propose (Formula presented.), a novel framework that enables efficient homomorphic ReLU evaluation over large integers (7–11 bits) via full-domain bootstrapping. Central to our approach is a signed digit decomposition algorithm, (Formula presented.), that partitions a large integer ciphertext into signed 6-bit segments using three new low-level primitives: (Formula presented.), (Formula presented.), and (Formula presented.). This decomposition preserves arithmetic consistency, avoids cross-segment carry propagation, and allows parallelized bootstrapping. By segmenting the large integer and processing each chunk independently with optimized small-integer bootstrapping, we achieve homomorphic ReLU with full-domain bootstrapping, which significantly reduces the total number of sequential bootstrapping operations required. The security of our scheme is guaranteed by TFHE. Experimental results demonstrate that the proposed method reduces the bootstrapping cost by an average of 28.58% compared to state-of-the-art approaches while maintaining 95.2% accuracy. With execution times ranging from 1.16 s to 1.62 s across 7–11 bit integers, our work bridges a critical gap toward a scalable and efficient homomorphic ReLU function, which is useful in privacy-preserving machine learning. Furthermore, an end-to-end encrypted inference test on a CNN model with the MNIST dataset confirms its practicality, achieving 88.85% accuracy and demonstrating a complete pipeline for privacy-preserving neural network evaluation.

Original languageEnglish
Article number21
JournalCryptography
Volume10
Issue number2
DOIs
StatePublished - Apr 2026
Externally publishedYes

Keywords

  • fully homomorphic encryption
  • homomorphic ReLU activation
  • integer bootstrapping
  • torus

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