arXiv Open Access 2025

Understanding and Mitigating Over-refusal for Large Language Models via Safety Representation

Junbo Zhang Ran Chen Qianli Zhou Xinyang Deng Wen Jiang
Lihat Sumber

Abstrak

Large language models demonstrate powerful capabilities across various natural language processing tasks, yet they also harbor safety vulnerabilities. To enhance LLM safety, various jailbreak defense methods have been proposed to guard against harmful outputs. However, improvements in model safety often come at the cost of severe over-refusal, failing to strike a good balance between safety and usability. In this paper, we first analyze the causes of over-refusal from a representation perspective, revealing that over-refusal samples reside at the boundary between benign and malicious samples. Based on this, we propose MOSR, designed to mitigate over-refusal by intervening the safety representation of LLMs. MOSR incorporates two novel components: (1) Overlap-Aware Loss Weighting, which determines the erasure weight for malicious samples by quantifying their similarity to pseudo-malicious samples in the representation space, and (2) Context-Aware Augmentation, which supplements the necessary context for rejection decisions by adding harmful prefixes before rejection responses. Experiments demonstrate that our method outperforms existing approaches in mitigating over-refusal while largely maintaining safety. Overall, we advocate that future defense methods should strike a better balance between safety and over-refusal.

Topik & Kata Kunci

Penulis (5)

J

Junbo Zhang

R

Ran Chen

Q

Qianli Zhou

X

Xinyang Deng

W

Wen Jiang

Format Sitasi

Zhang, J., Chen, R., Zhou, Q., Deng, X., Jiang, W. (2025). Understanding and Mitigating Over-refusal for Large Language Models via Safety Representation. https://arxiv.org/abs/2511.19009

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2025
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓