English

Toward Efficient Inference Attacks: Shadow Model Sharing via Mixture-of-Experts

Cryptography and Security 2025-10-16 v1

Abstract

Machine learning models are often vulnerable to inference attacks that expose sensitive information from their training data. Shadow model technique is commonly employed in such attacks, such as membership inference. However, the need for a large number of shadow models leads to high computational costs, limiting their practical applicability. Such inefficiency mainly stems from the independent training and use of these shadow models. To address this issue, we present a novel shadow pool training framework SHAPOOL, which constructs multiple shared models and trains them jointly within a single process. In particular, we leverage the Mixture-of-Experts mechanism as the shadow pool to interconnect individual models, enabling them to share some sub-networks and thereby improving efficiency. To ensure the shared models closely resemble independent models and serve as effective substitutes, we introduce three novel modules: path-choice routing, pathway regularization, and pathway alignment. These modules guarantee random data allocation for pathway learning, promote diversity among shared models, and maintain consistency with target models. We evaluate SHAPOOL in the context of various membership inference attacks and show that it significantly reduces the computational cost of shadow model construction while maintaining comparable attack performance.

Keywords

Cite

@article{arxiv.2510.13451,
  title  = {Toward Efficient Inference Attacks: Shadow Model Sharing via Mixture-of-Experts},
  author = {Li Bai and Qingqing Ye and Xinwei Zhang and Sen Zhang and Zi Liang and Jianliang Xu and Haibo Hu},
  journal= {arXiv preprint arXiv:2510.13451},
  year   = {2025}
}

Comments

To appear in NeurIPS 2025

R2 v1 2026-07-01T06:38:46.098Z