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Per-parameter Task Arithmetic for Unlearning in Large Language Models

Machine Learning 2026-01-30 v1

Abstract

In large language model (LLM) unlearning, private information is required to be removed. Task arithmetic unlearns by subtracting a specific task vector (TV)--defined as the parameter difference between a privacy-information-tuned model and the original model. While efficient, it can cause over-forgetting by disrupting parameters essential for retaining other information. Motivated by the observation that each parameter exhibits different importance for forgetting versus retention, we propose a per-parameter task arithmetic (PerTA) mechanism to rescale the TV, allowing per-parameter adjustment. These weights quantify the relative importance of each parameter for forgetting versus retention, estimated via gradients (i.e., PerTA-grad) or the diagonal Fisher information approximation (i.e., PerTA-fisher). Moreover, we discuss the effectiveness of PerTA, extend it to a more general form, and provide further analysis. Extensive experiments demonstrate that PerTA consistently improves upon standard TV, and in many cases surpasses widely used training-based unlearning methods in both forgetting effectiveness and overall model utility. By retaining the efficiency of task arithmetic while mitigating over-forgetting, PerTA offers a principled and practical framework for LLM unlearning.

Keywords

Cite

@article{arxiv.2601.22030,
  title  = {Per-parameter Task Arithmetic for Unlearning in Large Language Models},
  author = {Chengyi Cai and Zesheng Ye and Jiangchao Yao and Jianzhong Qi and Bo Han and Xiaolu Zhang and Feng Liu and Jun Zhou},
  journal= {arXiv preprint arXiv:2601.22030},
  year   = {2026}
}
R2 v1 2026-07-01T09:26:13.038Z