农业图书情报学报 ›› 2025, Vol. 37 ›› Issue (9): 4-17.doi: 10.13998/j.cnki.issn1002-1248.25-0560

• 特约文章 •    下一篇

面向人才供需适配的动态感知体系构建:理论框架与实现路径

杨冠灿, 张滋荷   

  1. 中国人民大学 信息资源管理学院,北京 100872
  • 收稿日期:2025-07-20 出版日期:2025-09-05 发布日期:2025-12-08
  • 作者简介:

    杨冠灿(1981- ),男,博士,副教授,研究方向为创新网络分析、专利数据挖掘、科学计量学研究

    张滋荷(2003- ),女,硕士研究生,研究方向为技术会聚的时序预测、专利数据挖掘

  • 基金资助:
    国家自然科学基金面上项目“复杂动态视角下的技术会聚形成机理及预测方法研究”(72274205); 高校人文社会科学重点研究基地重大项目“面向国家创新发展战略的智能科技情报理论构建”(22JJD870001)

Construction of a Dynamic Perception System for Talent Supply-Demand Matching: Theoretical Framework and Implementation Path

YANG Guancan, ZHANG Zihe   

  1. School of Information Resource Management, RenMin University of China, Beijing 100872
  • Received:2025-07-20 Online:2025-09-05 Published:2025-12-08

摘要:

【目的/意义】 新一轮科技革命与产业变革持续重塑劳动力市场结构,引发人才供需在规模、结构、技能与空间等多维度的系统性错配。为突破传统人才监测与治理机制的局限,本研究旨在构建面向人才供需适配的动态感知框架,以实现精准前瞻的人才治理。 【方法/过程】 本研究融合态势感知理论与情报流程,提出“数据-感知-理解-预测-决策”5层闭环治理框架。通过整合多源异构数据,引入事件抽取、大语言模型语义推理、知识图谱构建、因果推断及多智能体仿真等关键技术,构建从信息采集、认知结构化到态势推演与策略生成的全链条方法体系。 【结果/结论】 研究形成了可操作、可验证的人才供需动态感知理论框架,实现了对人才生态运行状态的实时感知、多维理解与前瞻预测,推动了人才治理从静态规划向动态感知、从经验决策向证据驱动的范式转型,为相关领域的理论深化与实践应用提供了方法论与路径参考。

关键词: 人才供需适配, 动态感知, 数据治理, 事件抽取, 知识图谱

Abstract:

[Purpose/Significance] Against the backdrop of rapid technological change and industrial transformation, China's labor market is undergoing profound restructuring, giving rise to multi-dimensional mismatches in the scale, structure, skills, and spatial distribution of talent supply and demand. Traditional governance models, which are largely dependent on statistical reporting and periodic planning, are increasingly inadequate in terms of timeliness, granularity, and evidence support. In response, this study focuses on matching talent supply and demand and integrates situation awareness theory with the intelligence-processing paradigm of "from information to decision." We propose a five-layer dynamic perception framework - "Data-Perception-Comprehension-Projection-Decision" - tailored to talent governance. The framework addresses the limitations of existing research, which often focuses on static measurements and neglects external events and policy shocks. It establishes a governance-oriented theoretical tool that meets major national strategic needs. By incorporating an event-driven dynamic sensing mechanism, the framework enables real-time identification and forward-looking regulation of talent mismatches in complex and evolving environments. [Method/Process] Theoretically, the study builds on Endsley's situation awareness model and further incorporates intelligence processes, causal inference, and complex systems theory, expanding the traditional "perception-comprehension-projection" cognitive sequence into a social closed loop governance system anchored by a robust data foundation and decision-feedback mechanism. Technically, we construct an event ontology and slot schema specific to talent supply-demand scenarios. Through event extraction and large language model-based semantic reasoning, the system generates structured "event-entity-relation" knowledge units from heterogeneous sources such as policy documents, industry reports, and job postings. Knowledge is then aligned and integrated using retrieval-augmented generation, domain knowledge graphs, and authoritative classification standards. At the modeling level, the framework integrates efficiency assessment, causal inference, and risk analysis into a unified "situation comprehension-situation projection" analytical architecture. Methods such as stochastic frontier analysis, difference-in-differences, and multi-agent simulation are employed to examine talent allocation efficiency, policy impacts, and supply-demand evolution. In application, a prototype system - combining data governance, event sensing, early warning, and decision support - is developed and tested using higher education major-industry matching as an empirical case. [Results/Conclusions] This research has developed an operational and verifiable theoretical and technical framework for the dynamic sensing of talent supply-demand alignment. It establishes a coherent chain that spans from "multi-source data integration" to "event-driven sensing," "causal mechanism analysis," "medium- and long-term trend projection," and "policy scenario evaluation," thereby facilitating a transformation in talent governance from static planning to dynamic monitoring, and from experience-based judgment to evidence-driven decision-making. The proposed system not only converts heterogeneous multi-source data into computable event knowledge, but also identifies the root causes of mismatches through causal inference and efficiency assessment. Moreover, it delineates potential future trajectories via trend forecasting and risk alerts. Building upon this foundation, decision-makers can leverage scenario simulation and strategy recommendations to obtain quantitative evidence and actionable plans for program restructuring, enrollment planning optimization, and curriculum reform. Nevertheless, the study has several limitations, including uneven data quality across sources, model dependence on historical samples, and the need for more fine-grained representation of complex behavioral mechanisms. Future research could build on the current work in several directions. For instance, it could incorporate richer data on individual behaviors and organizational strategies to enhance the model's ability to depict micro-level decision-making processes. It could also deepen the integration of causal inference with knowledge-graph techniques to improve the accuracy and clarity of identifying the effects of complex policy portfolios.

Key words: talent supply-demand matching, dynamic perception, data governance, event extraction, knowledge graph

中图分类号:  G350.7

引用本文

杨冠灿, 张滋荷. 面向人才供需适配的动态感知体系构建:理论框架与实现路径[J]. 农业图书情报学报, 2025, 37(9): 4-17.

YANG Guancan, ZHANG Zihe. Construction of a Dynamic Perception System for Talent Supply-Demand Matching: Theoretical Framework and Implementation Path[J]. Journal of library and information science in agriculture, 2025, 37(9): 4-17.