农业图书情报学报

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AI赋能的复杂历史事件事理图谱构建与应用研究

寇蕾蕾1,2, 祝忠明1,2, 王思丽3()   

  1. 1. 青藏高原人文环境数据智能实验室,兰州 730000
    2. 兰州大学青藏高原人文环境研究院,兰州 730000
    3. 中国科学院西北生态环境资源研究院,兰州 730000
  • 收稿日期:2026-01-20 出版日期:2026-04-22
  • 通讯作者: 王思丽
  • 作者简介:

    寇蕾蕾(1991- ),博士,助理研究员,研究方向为数字人文、国家安全治理

    祝忠明(1968- ),博士,研究员,研究方向为AI大模型、国家安全治理。

  • 基金资助:
    甘肃省科技计划“数据资源要素开放融合与社会公共服务能力协同提升路径研究”(25JRZA012); 兰州大学中央高校基本科研业务费专项资金(2025jbkyjd005); 国家广播电视总局部级社科研究项目“人工智能在广电视听领域的应用和管理研究”(GD2505)

Construction and Application of Complex Historical Event Evolution Graph Enabled by AI

KOU Leilei1,2, ZHU Zhongming1,2, WANG Sili3()   

  1. 1. Data Intelligence Laboratory of Tibetan Plateau Humanistic Environment, Lanzhou 730000
    2. Institute of Tibetan Plateau Humanistic Environment, Lanzhou University, Lanzhou 730000
    3. Northwest Institute of Eco-Environment and Resources, Lanzhou 730000
  • Received:2026-01-20 Online:2026-04-22
  • Contact: WANG Sili

摘要:

[目的/意义] 针对复杂历史事件组织中存在的知识分散、冗余与碎片化问题,提出一种AI赋能的事理图谱构建框架,探索其在数据抽取、语义组织与故事化应用方面的潜力,以提升历史知识的可发现性、可重用性与语义关联性。 [方法/过程] 首先,构建基于“数据层-语义层-应用层”3层架构的复杂历史事件事理图谱框架;其次,设计面向AI理解的复杂历史事件本体概念模型,并提出AI增强的事件关联性计算方法;最后,以十八军进藏事件为典型案例开展应用验证,揭示AI赋能事理图谱在历史知识整合与智能应用中的实现路径。 [结果/结论] 研究表明,AI技术能够有效提升复杂历史事件要素抽取与语义关联分析的精度,为历史知识的可计算化组织与智能服务提供可行路径。然而,该领域仍面临历史语料稀缺、事件泛化与分解主观性较强、多模态信息深度融合不足等挑战,未来需进一步探索人机协同机制与多源数据融合策略。

关键词: 人工智能, 复杂历史事件, 事理图谱, 十八军

Abstract:

[Purpose/Significance] To address the issues of knowledge dispersion, redundancy, and fragmentation within the organization of complex historical events, this study employs the event evolution graph method. It explores their potential applications in the semantic organization of historical events and the structured representation of historical knowledge. The aim is to enhance the discoverability, reusability, and semantic relevance of historical data, while broadening the theoretical framework and practical approaches of the event evolution graph in historical research. [Method/Process] First, we constructed a three-layer framework for complex historical event, consisting of a data layer, a semantic layer, and an application layer. The data layer enables the collection of all event elements and supports multimodal integration, including text, images, and maps. The semantic layer implements AI-enhanced event representation and deep relationship mining. The application layer performs correlation calculation and multi-level graph visualization, allowing users to interactively explore event structures and semantic pathways. On this basis, three key tasks were carried out. First, AI-enhanced methods for representing and extracting complex historical events were designed. In particular, a dynamic ontology model for AI understanding was constructed based on the W7 model, formally represented as:e = {what, why, who, how, which, when, where, environment, effect, certainty}. This formalization systematically depicts event elements and their semantic relationships, capturing not only basic event components but also contextual factors, causal consequences, and the degree of historical certainty. Second, AI-enhanced methods for calculating the correlation of complex historical events were proposed. These methods combine rule-based reasoning with machine learning classifiers to identify and quantify semantic relationships such as causality, temporality, correlation, and hierarchy among events. A case study on a representative complex historical event was conducted to validate the proposed framework and methods. [Results/Conclusions] The study demonstrates that AI can improve the accuracy of extracting event elements and analyzing semantic relationships. This provides a feasible technical pathway for organizing historical knowledge computationally and providing intelligent services. The case study results show that the generated event evolution graph captures multi-level event structures and reveals previously implicit causal and evolutionary patterns. However, research in this field still faces challenges, including the scarcity of high-quality historical corpora, subjectivity when generalizing and decomposing events, and insufficient integration of multimodal information. In the future, we will focus on three directions: developing weakly supervised learning and transfer learning methods tailored to scenarios with sparse historical data; designing human-computer collaborative tools for event decomposition and relationship annotation to balance automation with scholarly interpretability; and constructing multimodal event evolution graph for complex historical events by incorporating visual, spatial, and audio data.

Key words: artificial intelligence, complex historical events, event evolution graph, 18th Army

中图分类号:  G250

引用本文

寇蕾蕾, 祝忠明, 王思丽. AI赋能的复杂历史事件事理图谱构建与应用研究[J/OL]. 农业图书情报学报. https://doi.org/10.13998/j.cnki.issn1002-1248.26-0034.

KOU Leilei, ZHU Zhongming, WANG Sili. Construction and Application of Complex Historical Event Evolution Graph Enabled by AI[J/OL]. Journal of library and information science in agriculture. https://doi.org/10.13998/j.cnki.issn1002-1248.26-0034.