Shuhan Luo
2024
Efficient Knowledge Infusion via KG-LLM Alignment
Zhouyu Jiang
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Ling Zhong
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Mengshu Sun
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Jun Xu
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Rui Sun
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Hui Cai
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Shuhan Luo
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Zhiqiang Zhang
Findings of the Association for Computational Linguistics: ACL 2024
To tackle the problem of domain-specific knowledge scarcity within large language models (LLMs), knowledge graph-retrievalaugmented method has been proven to be an effective and efficient technique for knowledge infusion. However, existing approaches face two primary challenges: knowledge mismatch between public available knowledge graphs and the specific domain of the task at hand, and poor information compliance of LLMs with knowledge graphs. In this paper, we leverage a small set of labeled samples and a large-scale corpus to efficiently construct domain-specific knowledge graphs by an LLM, addressing the issue of knowledge mismatch. Additionally, we propose a three-stage KG-LLM alignment strategy to enhance the LLM’s capability to utilize information from knowledge graphs. We conduct experiments with a limited-sample setting on two biomedical question-answering datasets, and the results demonstrate that our approach outperforms existing baselines.
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Co-authors
- Hui Cai 1
- Jun Xu 1
- Ling Zhong 1
- Mengshu Sun 1
- Rui Sun 1
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