A Sample-Level Evaluation and Generative Framework for Model Inversion Attacks

Authors

  • Haoyang Li The Hong Kong Polytechnic University
  • Li Bai The Hong Kong Polytechnic University
  • Qingqing Ye The Hong Kong Polytechnic University
  • Haibo Hu The Hong Kong Polytechnic University
  • Yaxin Xiao The Hong Kong Polytechnic University
  • Huadi Zheng Huawei Technology
  • Jianliang Xu Hong Kong Baptist University

DOI:

https://doi.org/10.1609/aaai.v39i17.34012

Abstract

Model Inversion (MI) attacks, which reconstruct the training dataset of neural networks, pose significant privacy concerns in machine learning. Recent MI attacks have managed to reconstruct realistic label-level private data, such as the general appearance of a target person from all training images labeled on him. Beyond label-level privacy, in this paper we show sample-level privacy, the private information of a single target sample, is also important but under-explored in the MI literature due to the limitations of existing evaluation metrics. To address this gap, this study introduces a novel metric tailored for training-sample analysis, namely, the Diversity and Distance Composite Score (DDCS), which evaluates the reconstruction fidelity of each training sample by encompassing various MI attack attributes. This, in turn, enhances the precision of sample-level privacy assessments. Leveraging DDCS as a new evaluative lens, we observe that many training samples remain resilient against even the most advanced MI attack. As such, we further propose a transfer learning framework that augments the generative capabilities of MI attackers through the integration of entropy loss and natural gradient descent. Extensive experiments verify the effectiveness of our framework on improving state-of-the-art MI attacks over various metrics including DDCS, coverage and FID. Finally, we demonstrate that DDCS can also be useful for MI defense, by identifying samples susceptible to MI attacks in an unsupervised manner.

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Published

2025-04-11

How to Cite

Li, H., Bai, L., Ye, Q., Hu, H., Xiao, Y., Zheng, H., & Xu, J. (2025). A Sample-Level Evaluation and Generative Framework for Model Inversion Attacks. Proceedings of the AAAI Conference on Artificial Intelligence, 39(17), 18287–18295. https://doi.org/10.1609/aaai.v39i17.34012

Issue

Section

AAAI Technical Track on Machine Learning III