Towards Secure Tuning: Mitigating Security Risks Arising from Benign Instruction Fine-Tuning
Du, Yanrui, Zhao, Sendong, Cao, Jiawei, Ma, Ming, Zhao, Danyang, Fan, Fenglei, Liu, Ting, Qin, Bing
–arXiv.org Artificial Intelligence
Instruction Fine-Tuning (IFT) has become an essential method for adapting base Large Language Models (LLMs) into variants for professional and private use. However, researchers have raised concerns over a significant decrease in LLMs' security following IFT, even when the IFT process involves entirely benign instructions (termed Benign IFT). Our study represents a pioneering effort to mitigate the security risks arising from Benign IFT. Specifically, we conduct a Module Robustness Analysis, aiming to investigate how LLMs' internal modules contribute to their security. Based on our analysis, we propose a novel IFT strategy, called the Modular Layer-wise Learning Rate (ML-LR) strategy. In our analysis, we implement a simple security feature classifier that serves as a proxy to measure the robustness of modules (e.g. $Q$/$K$/$V$, etc.). Our findings reveal that the module robustness shows clear patterns, varying regularly with the module type and the layer depth. Leveraging these insights, we develop a proxy-guided search algorithm to identify a robust subset of modules, termed Mods$_{Robust}$. During IFT, the ML-LR strategy employs differentiated learning rates for Mods$_{Robust}$ and the rest modules. Our experimental results show that in security assessments, the application of our ML-LR strategy significantly mitigates the rise in harmfulness of LLMs following Benign IFT. Notably, our ML-LR strategy has little impact on the usability or expertise of LLMs following Benign IFT. Furthermore, we have conducted comprehensive analyses to verify the soundness and flexibility of our ML-LR strategy.
arXiv.org Artificial Intelligence
Oct-6-2024
- Country:
- Asia > China
- Heilongjiang Province > Harbin (0.04)
- Hong Kong (0.04)
- Asia > China
- Genre:
- Research Report > New Finding (1.00)
- Industry:
- Technology: