信息资源管理学报 ›› 2026, Vol. 16 ›› Issue (1): 116-130.doi: 10.13365/j.jirm.2026.01.116

• 研究论文 • 上一篇    下一篇

大语言模型驱动的《活计档》知识图谱构建

隋安 童永生 高宁   

  1. 江南大学设计学院,无锡,214000
  • 出版日期:2026-01-26 发布日期:2026-03-23
  • 作者简介:隋安,博士研究生,研究方向为设计史信息组织、古籍数字化研究、古代造物研究;童永生(通讯作者),博士,教授,博士生导师,研究方向为设计历史理论研究、古籍数字化研究、古代造物研究,Email:awulee@jiangnan.edu.cn;高宁,博士研究生,研究方向为设计历史理论研究、古代造物研究。
  • 基金资助:
    本文系故宫博物院第二期开放课题重点项目“ 清宫造办处与清代宫廷设计研究”(202405008)研究成果之一,本课题得到龙湖-故宫文化基金、北京故宫文物保护基金会公益资助。

Construction of a Knowledge Graph for "Huoji Dang" Driven by Large Language Models

Sui An Tong Yongsheng Gao Ning   

  1. School of Design, Jiangnan University, Wuxi, 214000
  • Online:2026-01-26 Published:2026-03-23
  • About author:Sui An, Ph.D. candidate, research interests including information organization in design history, digitalization of ancient texts, ancient material culture studies; Tong Yongsheng (corresponding author), Ph.D., professor, doctoral supervisor, research interests including theoretical studies in design history, digitalization of ancient texts, ancient material culture studies, Email: awulee@jiangnan.edu.cn; Gao Ning, Ph.D. candidate, research interests including theoretical studies in design history, ancient material culture studies.
  • Supported by:
    This article is one of the research outcomes of the key project under the second phase of the Open Research Fund Program of the Palace Museum, titled "Research on the Imperial Workshops of the Qing Court and Qing Dynasty Court Design" (202405008). This project has received public welfare funding support from the Longhu-Forbidden City Cultural Fund and the Beijing Forbidden City Cultural Heritage Conservation Foundation.

摘要: 通过构建清雍正造办处档案的知识图谱,系统化整理《活计档》中的造物信息,打破传统研究的碎片化局限,为清代宫廷造物研究提供新的视角和方法论支持。研究采用大语言模型和提示词工程技术,通过多次迭代和优化提示词,结合人工校对,最后将数据储存于Neo4j图数据库中,实现了《活计档》中非结构化数据的自动提取与知识图谱构建。结果表明,DeepSeek-V3在各项指标中均超越其他大语言模型,综合性能显著领先。本文的方法能够高效精准地提取实体、属性和关系,生成的知识图谱清晰呈现了清雍正造办处档案的组织结构、制作流程及帝王审美偏好等知识关联,提出的“LLM+提示词工程”在解决古籍文本自动提取问题中展现出可迁移性,可为其他古籍知识抽取提供参考与借鉴,实现古籍信息的结构化与可视化,为清代宫廷造物研究提供系统化的知识共享平台。

关键词: 《活计档》档案, 知识图谱, 清代宫廷造物, 大语言模型, 提示词工程

Abstract: By constructing a knowledge graph of the Qing Yongzheng Imperial Workshop archives, this study systematically organizes the artefact-related information recorded in the Huoji Dang, thereby overcoming the fragmented limitations of traditional research and providing new perspectives and methodological support for the study of imperial artefacts in the Qing dynasty. The research employs large language models (LLMs) and prompt engineering techniques. After iteratively optimizing prompts and incorporating manual verification, the extracted data are stored in a Neo4j graph database, enabling the automatic transformation of unstructured data in the Huoji Dang into a structured knowledge graph. Results demonstrate that DeepSeek-V3 outperforms other LLMs across all evaluation metrics, with clear overall advantages. In sum, this method effectively and accurately extracts entities, attributes, and relationships, and the resulting knowledge graph clearly illustrates the organizational structure, production processes, and imperial aesthetic preferences embedded in the archives. Moreover, the proposed “LLM + prompt engineering” approach demonstrates strong transferability in addressing the automatic extraction of premodern texts, offering a valuable reference for similar studies. It realizes the structuring and visualization of textual information, thereby providing a systematic knowledge-sharing platform for research on Qing imperial artefacts.

Key words: The Huoji Dang (Workshops' archives), Knowledge graph, Qing dynasty palace artifacts, Large language model, Prompt engineering

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