English

A Stealthy Wrongdoer: Feature-Oriented Reconstruction Attack against Split Learning

Cryptography and Security 2024-12-23 v3

Abstract

Split Learning (SL) is a distributed learning framework renowned for its privacy-preserving features and minimal computational requirements. Previous research consistently highlights the potential privacy breaches in SL systems by server adversaries reconstructing training data. However, these studies often rely on strong assumptions or compromise system utility to enhance attack performance. This paper introduces a new semi-honest Data Reconstruction Attack on SL, named Feature-Oriented Reconstruction Attack (FORA). In contrast to prior works, FORA relies on limited prior knowledge, specifically that the server utilizes auxiliary samples from the public without knowing any client's private information. This allows FORA to conduct the attack stealthily and achieve robust performance. The key vulnerability exploited by FORA is the revelation of the model representation preference in the smashed data output by victim client. FORA constructs a substitute client through feature-level transfer learning, aiming to closely mimic the victim client's representation preference. Leveraging this substitute client, the server trains the attack model to effectively reconstruct private data. Extensive experiments showcase FORA's superior performance compared to state-of-the-art methods. Furthermore, the paper systematically evaluates the proposed method's applicability across diverse settings and advanced defense strategies.

Keywords

Cite

@article{arxiv.2405.04115,
  title  = {A Stealthy Wrongdoer: Feature-Oriented Reconstruction Attack against Split Learning},
  author = {Xiaoyang Xu and Mengda Yang and Wenzhe Yi and Ziang Li and Juan Wang and Hongxin Hu and Yong Zhuang and Yaxin Liu},
  journal= {arXiv preprint arXiv:2405.04115},
  year   = {2024}
}

Comments

Accepted to CVPR 2024

R2 v1 2026-06-28T16:19:09.742Z