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Forget What Matters, Keep the Rest: Selective Unlearning of Informative Tokens
April 20, 2026 ยท Grace Period ยท ๐ ACL 2026 Main Conference
Authors
Seunghee Koh, Sunghyun Baek, Youngdong Kim, Junmo Kim
arXiv ID
2604.17785
Category
cs.CL: Computation & Language
Cross-listed
cs.AI,
cs.LG
Citations
0
Venue
ACL 2026 Main Conference
Abstract
Unlearning in large language models (LLMs) has emerged as a promising safeguard against adversarial behaviors. When the forgetting loss is applied uniformly without considering token-level semantic importance, model utility can be unnecessarily degraded. Recent studies have explored token-wise loss regularizers that prioritize informative tokens, but largely rely on ground-truth confidence or external linguistic parsers, which limits their ability to capture contextual information or the model's overall predictive state. Intuitively, function words like "the" primarily serve syntactic roles and are highly predictable with little ambiguity, but informative words admit multiple plausible alternatives with greater uncertainty. Based on this intuition, we propose Entropy-guided Token Weighting (ETW), a token-level unlearning regularizer that uses entropy of the predictive distribution as a proxy for token informativeness. We demonstrate that informative tokens tend to have higher entropy, whereas structural tokens tend to have lower entropy. This behavior enables ETW to achieve more effective unlearning while better preserving model utility than existing token-level approaches.
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