农业图书情报学报

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基于多模态资源画像的图书馆AI大模型取用优化研究

秦淼1, 王清飞2   

  1. 1. 河南牧业经济学院 图书馆,郑州 450046
    2. 郑州大学 信息管理学院,郑州 450001
  • 收稿日期:2025-05-15 出版日期:2025-09-17
  • 作者简介:

    秦淼,女,硕士,助理馆员,研究方向为信息化建设

    王清飞,男,在读博士,副研究馆员,研究方向为数据治理

  • 基金资助:
    2025年度河南省档案科技项目“人事档案中个人数据风险识别与分级保护研究”(2025-B-001)

Large AI Model Utilization Optimization in Libraries Based on Multimodal Resource Profiling

QIN Miao1, WANG Qingfei2   

  1. 1. Henan University of Animal Husbandry and Economy Library, Zhengzhou 450046
    2. School of Information Management, Zhengzhou University, Zhengzhou 450001
  • Received:2025-05-15 Online:2025-09-17

摘要:

【目的/意义】 本研究基于多模态资源画像,优化图书馆AI大模型取用策略,进而提升图书馆资源的利用效率和用户体验。 【方法/过程】 多模态资源画像通过整合文本、图像、音频和视频等多种信息形式形成全面的资源描述方案,为后续AI模型应用提供丰富的数据基础。 【结果/结论】 通过对用户行为数据的分析,引入了动态优化算法,根据用户的实时反馈不断调整推荐策略,来提高推荐的精准度和相关性。使用户能够理解推荐结果背后的逻辑,从而提升用户满意度。该方法在资源利用率和用户参与度方面均显著优于传统推荐系统。本研究对未来图书馆技术的发展奠定了基础,也为多模态资源画像的应用场景开拓了新的可能。

关键词: 多模态资源画像, 图书馆, AI大模型, 资源优化, 用户体验, 信息行为

Abstract:

[Purpose/Significance] With the rapid advancement of artificial intelligence (AI) technologies, libraries are transforming their service models and content offerings. Large AI models have opened up broader development opportunities for smart libraries. However, the rational adoption and application of these models has posed a significant challenge to libraries. This study employs multimodal resource profiling to conduct research on the optimization of large AI model utilization in libraries, revealing the intrinsic relationships among various types of library resource data. Based on these insights, the optimization methods and related strategies are extracted to enhance the efficiency of library resource utilization and improve user experience. [Method/Process] Multimodal resource profiling is a comprehensive representation that captures the intrinsic characteristics of library resources through tag extraction, aggregation analysis, and visualization of diverse data generated within the libraries. By utilizing a novel clustering algorithm, it overcomes the high sensitivity to input parameters characteristic of traditional algorithms and achieves natural clustering across resources with varying densities, thereby enabling the generation of accurate multimodal resource profiles. The resource profiling model provides a theoretical foundation for optimizing the deployment and utilization of large AI models in libraries, while also delivering rich data support for subsequent AI model applications. The adoption strategy proposed in this study is divided into two aspects: model selection and model utilization. Model selection focuses on compatibility and accuracy to achieve an optimal match between the model and both library resources and user needs. Model utilization emphasizes the effectiveness and usability of the output, thereby enhancing operational efficiency and user experience. Based on this framework, the overall operational mechanism of the adoption optimization strategy is designed around continuous model monitoring, real-time collection of user feedback, iterative model updates, and dynamic adjustment of multimodal resource profiles. [Results/Conclusions] This study takes a public digital library on "Telegram" as a case study to generate multimodal resource profiles, which meticulously categorize user groups, interests, and emotional intensities. By integrating the large AI model adoption optimization strategy with the outcomes of multimodal resource profiling, the model autonomously identifies the most task-relevant features, reducing the need for manual intervention. Not only does it achieve high prediction accuracy, but the explanatory feature weights it outputs also provide a quantifiable basis for service optimization. Through comparative experiments with commonly used structural modules, the proposed method demonstrates significant advantages over traditional recommendation systems in terms of both resource utilization efficiency and user engagement. This study lays the foundation for the future development of library technology and opens up new possibilities for the application of multimodal resource profiling.

Key words: multimodal resource profiling, libraries, AI large models, resource optimization, user experience, information behavior

中图分类号:  G258

引用本文

秦淼, 王清飞. 基于多模态资源画像的图书馆AI大模型取用优化研究[J/OL]. 农业图书情报学报. https://doi.org/10.13998/j.cnki.issn1002-1248.25-0259.

QIN Miao, WANG Qingfei. Large AI Model Utilization Optimization in Libraries Based on Multimodal Resource Profiling[J/OL]. Journal of library and information science in agriculture. https://doi.org/10.13998/j.cnki.issn1002-1248.25-0259.