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Select to Know: An Internal-External Knowledge Self-Selection Framework for Domain-Specific Question Answering

Select to Know: An Internal-External Knowledge Self-Selection Framework for Domain-Specific Question Answering

来源:Arxiv_logoArxiv
英文摘要

Large Language Models (LLMs) perform well in general QA but often struggle in domain-specific scenarios. Retrieval-Augmented Generation (RAG) introduces external knowledge but suffers from hallucinations and latency due to noisy retrievals. Continued pretraining internalizes domain knowledge but is costly and lacks cross-domain flexibility. We attribute this challenge to the long-tail distribution of domain knowledge, which leaves partial yet useful internal knowledge underutilized. We further argue that knowledge acquisition should be progressive, mirroring human learning: first understanding concepts, then applying them to complex reasoning. To address this, we propose Selct2Know (S2K), a cost-effective framework that internalizes domain knowledge through an internal-external knowledge self-selection strategy and selective supervised fine-tuning. We also introduce a structured reasoning data generation pipeline and integrate GRPO to enhance reasoning ability. Experiments on medical, legal, and financial QA benchmarks show that S2K consistently outperforms existing methods and matches domain-pretrained LLMs with significantly lower cost.

Bolei He、Xinran He、Run Shao、Shanfu Shu、Xianwei Xue、Mingquan Cheng、Haifeng Li、Zhenhua Ling

医学现状、医学发展医学研究方法法律

Bolei He,Xinran He,Run Shao,Shanfu Shu,Xianwei Xue,Mingquan Cheng,Haifeng Li,Zhenhua Ling.Select to Know: An Internal-External Knowledge Self-Selection Framework for Domain-Specific Question Answering[EB/OL].(2025-08-21)[2025-09-03].https://arxiv.org/abs/2508.15213.点此复制

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