LGAug 21, 2025

SafeLLM: Unlearning Harmful Outputs from Large Language Models against Jailbreak Attacks

arXiv:2508.15182v14 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses safety issues for LLM users by providing a scalable defense against harmful content, though it appears incremental as it builds on existing unlearning methods.

The paper tackles the problem of jailbreak attacks on Large Language Models (LLMs) that cause harmful outputs, proposing SafeLLM, an unlearning-based defense framework that reduces attack success rates while preserving general capabilities, as shown in experiments on models like Vicuna, LLaMA, and GPT-J.

Jailbreak attacks pose a serious threat to the safety of Large Language Models (LLMs) by crafting adversarial prompts that bypass alignment mechanisms, causing the models to produce harmful, restricted, or biased content. In this paper, we propose SafeLLM, a novel unlearning-based defense framework that unlearn the harmful knowledge from LLMs while preserving linguistic fluency and general capabilities. SafeLLM employs a three-stage pipeline: (1) dynamic unsafe output detection using a hybrid approach that integrates external classifiers with model-internal evaluations; (2) token-level harmful content tracing through feedforward network (FFN) activations to localize harmful knowledge; and (3) constrained optimization to suppress unsafe behavior without degrading overall model quality. SafeLLM achieves targeted and irreversible forgetting by identifying and neutralizing FFN substructures responsible for harmful generation pathways. Extensive experiments on prominent LLMs (Vicuna, LLaMA, and GPT-J) across multiple jailbreak benchmarks show that SafeLLM substantially reduces attack success rates while maintaining high general-purpose performance. Compared to standard defense methods such as supervised fine-tuning and direct preference optimization, SafeLLM offers stronger safety guarantees, more precise control over harmful behavior, and greater robustness to unseen attacks. Moreover, SafeLLM maintains the general performance after the harmful knowledge unlearned. These results highlight unlearning as a promising direction for scalable and effective LLM safety.

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