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Self-Ensemble Protection: Training Checkpoints Are Good Data Protectors

Machine Learning 2023-04-13 v3 Cryptography and Security Machine Learning

Abstract

As data becomes increasingly vital, a company would be very cautious about releasing data, because the competitors could use it to train high-performance models, thereby posing a tremendous threat to the company's commercial competence. To prevent training good models on the data, we could add imperceptible perturbations to it. Since such perturbations aim at hurting the entire training process, they should reflect the vulnerability of DNN training, rather than that of a single model. Based on this new idea, we seek perturbed examples that are always unrecognized (never correctly classified) in training. In this paper, we uncover them by model checkpoints' gradients, forming the proposed self-ensemble protection (SEP), which is very effective because (1) learning on examples ignored during normal training tends to yield DNNs ignoring normal examples; (2) checkpoints' cross-model gradients are close to orthogonal, meaning that they are as diverse as DNNs with different architectures. That is, our amazing performance of ensemble only requires the computation of training one model. By extensive experiments with 9 baselines on 3 datasets and 5 architectures, SEP is verified to be a new state-of-the-art, e.g., our small =2/255\ell_\infty=2/255 perturbations reduce the accuracy of a CIFAR-10 ResNet18 from 94.56% to 14.68%, compared to 41.35% by the best-known method. Code is available at https://github.com/Sizhe-Chen/SEP.

Keywords

Cite

@article{arxiv.2211.12005,
  title  = {Self-Ensemble Protection: Training Checkpoints Are Good Data Protectors},
  author = {Sizhe Chen and Geng Yuan and Xinwen Cheng and Yifan Gong and Minghai Qin and Yanzhi Wang and Xiaolin Huang},
  journal= {arXiv preprint arXiv:2211.12005},
  year   = {2023}
}

Comments

ICLR 2023

R2 v1 2026-06-28T06:33:36.700Z