Chenghao Ma
2024
ChatKBQA: A Generate-then-Retrieve Framework for Knowledge Base Question Answering with Fine-tuned Large Language Models
Haoran Luo
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Haihong E
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Zichen Tang
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Shiyao Peng
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Yikai Guo
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Wentai Zhang
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Chenghao Ma
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Guanting Dong
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Meina Song
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Wei Lin
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Yifan Zhu
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Anh Tuan Luu
Findings of the Association for Computational Linguistics ACL 2024
Knowledge Base Question Answering (KBQA) aims to answer natural language questions over large-scale knowledge bases (KBs), which can be summarized into two crucial steps: knowledge retrieval and semantic parsing. However, three core challenges remain: inefficient knowledge retrieval, mistakes of retrieval adversely impacting semantic parsing, and the complexity of previous KBQA methods. To tackle these challenges, we introduce ChatKBQA, a novel and simple generate-then-retrieve KBQA framework, which proposes first generating the logical form with fine-tuned LLMs, then retrieving and replacing entities and relations with an unsupervised retrieval method, to improve both generation and retrieval more directly. Experimental results show that ChatKBQA achieves new state-of-the-art performance on standard KBQA datasets, WebQSP, and CWQ. This work can also be regarded as a new paradigm for combining LLMs with knowledge graphs (KGs) for interpretable and knowledge-required question answering.
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Co-authors
- Haoran Luo 1
- Haihong E 1
- Zichen Tang 1
- Shiyao Peng 1
- Yikai Guo 1
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