G-Boost: Boosting Private SLMs with General LLMs
- URL: http://arxiv.org/abs/2503.10367v1
- Date: Thu, 13 Mar 2025 13:47:03 GMT
- Title: G-Boost: Boosting Private SLMs with General LLMs
- Authors: Yijiang Fan, Yuren Mao, Longbin Lai, Ying Zhang, Zhengping Qian, Yunjun Gao,
- Abstract summary: Most Large Language Models (LLMs) developers can only fine-tune Small Language Models (SLMs) on their own data.<n>This paper proposes to ask general LLMs for help to boost the performance of private SLMs.
- Score: 27.656951776655045
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Due to the limited computational resources, most Large Language Models (LLMs) developers can only fine-tune Small Language Models (SLMs) on their own data. These private SLMs typically have limited effectiveness. To boost the performance of private SLMs, this paper proposes to ask general LLMs for help. The general LLMs can be APIs or larger LLMs whose inference cost the developers can afford. Specifically, we propose the G-Boost framework where a private SLM adaptively performs collaborative inference with a general LLM under the guide of process reward. Experiments demonstrate that our framework can significantly boost the performance of private SLMs.
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