Fundamental Safety-Capability Trade-offs in Fine-tuning Large Language Models

Fundamental Safety-Capability Trade-offs in Fine-tuning Large Language Models










arXiv:2503.20807v1 Announce Type: new
Abstract: Fine-tuning Large Language Models (LLMs) on some task-specific datasets has been a primary use of LLMs. However, it has been empirically observed that this approach to enhancing capability inevitably compromises safety, a phenomenon also known as the safety-capability trade-off in LLM fine-tuning. This paper presents a theoretical framework for understanding the interplay between safety and capability in two primary safety-aware LLM fine-tuning strategies, providing new insights into the effects of data similarity, context overlap, and alignment loss landscape. Our theoretical results characterize the fundamental limits of the safety-capability trade-off in LLM fine-tuning, which are also validated by numerical experiments.






Pin-Yu Chen, Han Shen, Payel Das, Tianyi Chen





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