Erase or Hide? Suppressing Spurious Unlearning Neurons for Robust Unlearning

Abstract

Large language models trained on web-scale data can memorize private or sensitive knowledge, raising significant privacy risks. Although some unlearning methods mitigate these risks, they remain vulnerable to "relearning" during subsequent training, allowing a substantial portion of forgotten knowledge to resurface. In this paper, we show that widely used unlearning methods cause shallow alignment: instead of faithfully erasing target knowledge, they generate spurious unlearning neurons that amplify negative influence to hide it. To overcome this limitation, we introduce Ssiuu, a new class of unlearning methods that employs attribution-guided regularization to prevent spurious negative influence and faithfully remove target knowledge. Experimental results confirm that our method reliably erases target knowledge and outperforms strong baselines across two practical retraining scenarios: (1) adversarial injection of private data, and (2) benign attack using an instruction-following benchmark. Our findings highlight the necessity of robust and faithful unlearning methods for safe deployment of language models.

Cite

Text

Yang et al. "Erase or Hide? Suppressing Spurious Unlearning Neurons for Robust Unlearning." International Conference on Learning Representations, 2026.

Markdown

[Yang et al. "Erase or Hide? Suppressing Spurious Unlearning Neurons for Robust Unlearning." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/yang2026iclr-erase/)

BibTeX

@inproceedings{yang2026iclr-erase,
  title     = {{Erase or Hide? Suppressing Spurious Unlearning Neurons for Robust Unlearning}},
  author    = {Yang, Nakyeong and Kim, Dong-Kyum and Kwon, Jea and Kim, Minsung and Jung, Kyomin and Cha, Meeyoung},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/yang2026iclr-erase/}
}