信息资源管理学报 ›› 2026, Vol. 16 ›› Issue (2): 140-153.doi: 10.13365/j.jirm.2026.02.140

• 研究论文 • 上一篇    下一篇

基于动态知识图谱检索增强的网络热词发现与演化预测

洪亮1,2 林志煜1   

  1. 1.武汉大学信息管理学院,武汉,430072; 
    2.武汉大学人工智能学院,武汉,430072
  • 出版日期:2026-03-26 发布日期:2026-06-04
  • 作者简介:洪亮(通讯作者),博士,教授,研究方向为知识图谱与大模型,Email: hong@whu.edu.cn;林志煜,硕士生,研究方向为知识图谱与大模型。
  • 基金资助:
    本文系国家自然科学基金项目“ 融合大模型和知识大图的学术全文本隐性知识关联发现研究”(72474163)的研究成果。

Discovery and Evolution Prediction of Internet Meme Based on Dynamic Knowledge Graph

Hong Liang1,2 Lin Zhiyu1   

  1. 1.School of Information Management, Wuhan University, Wuhan, 430072; 
    2.School of Artificial Intelligence, Wuhan University, Wuhan, 430072
  • Online:2026-03-26 Published:2026-06-04
  • About author:Hong Liang (corresponding author), professor, Ph.D., doctoral supervisor, research interests including knowledge graphs and large language models, Email: hong@whu.edu.cn; Lin Zhiyu, master candidate, research interests including knowledge graphs and large language models.
  • Supported by:
    This work is one of the research outcomes of the project of National Natural Science Foundation of China "Research on Implicit Knowledge Association Discovery in Academic Full Texts Integrating Large Language Models and Large Knowledge Graphs" (72474163).

摘要: 针对现有网络热词发现方法难以应对热词表达不规范、传播速度快及语义内涵模糊等问题,本研究提出一种融合动态知识图谱与检索增强生成的协同框架。通过构建自适应更新的知识图谱,并结合大语言模型的上下文理解能力,实现对网络热词的精准识别与演化路径追踪。在基于自建的社交媒体语料上的实验表明,本研究方法能有效克服传统静态模型的时滞缺陷和黑箱模型的不可解释性,在热词发现任务中取得了优于主流基线模型的效果,同时深入分析了基于图谱检索增强策略在处理混杂表达时的优势与挑战,系统地验证了研究框架对最终性能的贡献。最后以实际网络热词演化案例进行分析,验证研究框架的有效性,为高噪声、快变异网络语言现象的实时感知与深度解析提供支持。

关键词: 动态知识图谱, 检索增强生成, 大语言模型, 网络热词, 语义关联分析

Abstract: To address the limitations of existing methods for detecting internet memes because of their irregular expressions, rapid propagation, and ambiguous semantics, this study proposes a collaborative framework that integrates a dynamic knowledge graph with retrieval-augmented generation. By constructing an adaptively updated knowledge graph and leveraging the contextual understanding capabilities of large language models, the proposed framework enables accurate identification and evolutionary trajectory tracking of internet memes. Experiments conducted on a self-built social media corpus demonstrate that the proposed method effectively overcomes the time-lag limitations of traditional static models and the lack of interpretability inherent in black-box models. It achieves superior performance in memes detection compared to mainstream baseline models. Furthermore, the study provides an in-depth analysis of the advantages and challenges of the graph-based retrieval-augmented strategy in handling noisy and unconventional expressions, and systematically validates the contribution of the proposed framework to overall performance. Finally, a case study of real-world internet memes evolution is presented to verify the effectiveness of the framework, offering support for real-time perception and in-depth analysis of highly noisy and rapidly evolving internet language phenomena.

Key words: Dynamic knowledge graph, Retrieval-augmented generation, Large language models, Internet Meme, Semantic association analysis

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