AI RESEARCH
Improving LLM Unlearning Robustness via Random Perturbations
arXiv CS.CL
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ArXi:2501.19202v5 Announce Type: replace Here, we show that current LLM unlearning methods inherently reduce models' robustness, causing them to misbehave even when a single non-adversarial forget-token is present in the retain-query. Toward understanding underlying causes, we propose a novel theoretical framework that reframes the unlearning process as a backdoor attack and defense problem: we formulate how the forgetting process inadvertently learns to align forget-tokens (backdoor triggers) with the target-representations (target labels.