ACL2025

LED-Merging: Mitigating Safety-Utility Conflicts in Model Merging with Location-Election-Disjoint

Qianli Ma, Dongrui Liu, Qian Chen, Linfeng Zhang, Jing Shao

被引用 5 次

摘要

Fine-tuning pre-trained Large Language Models (LLMs) for specialized tasks incurs substantial computational and data costs. While model merging offers a training-free solution to integrate multiple task-specific models, existing methods suffer from safety-utility conflicts where enhanced general capabilities degrade safety safeguards. We identify two root causes: neuron misidentification\textbf{neuron misidentification} due to simplistic parameter magnitude-based selection, and cross-task neuron interference\textbf{cross-task neuron interference} during merging. To address these challenges, we propose LED-Merging\textbf{LED-Merging}, a three-stage framework that L\textbf{L}ocates task-specific neurons via gradient-based attribution, dynamically E\textbf{E}lects critical neurons through multi-model importance fusion, and D\textbf{D}isjoints conflicting updates through parameter isolation. Extensive experiments on Llama-3-8B, Mistral-7B, and Llama2-13B demonstrate that LED-Merging effectively reduces harmful response rates, showing a 31.4% decrease on Llama-3-8B-Instruct on HarmBench, while simultaneously preserving 95% of utility performance, such as achieving 52.39% accuracy on GSM8K. LED-Merging resolves safety-utility conflicts and provides a lightweight, training-free paradigm for constructing reliable multi-task LLMs. Code is available at \href\href{https://github.com/MqLeet/LED-Merging}{GitHub}.