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Enterprise AI Analysis: Research Hotspots and Frontier Trends of Vocational Education in China under the Influence of Artificial Intelligence: A Bibliometric Analysis Based on CiteSpace

Enterprise AI Analysis

Research Hotspots and Frontier Trends of Vocational Education in China under the Influence of Artificial Intelligence: A Bibliometric Analysis Based on CiteSpace

Authors: Ruiyun Du, Ninghui Tan, Fangying Jiang, Qingchun Weng

This study uses China National Knowledge Infrastructure (CNKI) as the data source platform, focuses on high-quality papers published in Peking University core journals and CSSCI journals. It uses CiteSpace, a bibliometric software that looks at research, to find out about the most popular topics, how research has developed, and the latest trends in vocational and technical education in China in the era of artificial intelligence.

Executive Impact Snapshot

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0 Papers Analyzed
0 Core Authors Identified
0 Top Author Publications
0 Modularity Index (Q)
0 Silhouette Coefficient (S)

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This study utilized China National Knowledge Infrastructure (CNKI) as the primary data source, specifically focusing on high-quality papers from Peking University core journals and CSSCI journals. A rigorous process of retrieval, screening, and cleaning resulted in a final dataset of 307 valid papers. The bibliometric software CiteSpace (version 6.3.1) was employed for analysis, performing betweenness centrality and cluster analysis to ensure the significance and credibility of the findings (modularity Q-values of 0.8483 and silhouette S-values of 0.9808).

Analysis revealed that Professor Yanli Xu from Tianjin University was the most prolific author with 10 papers. A total of 14 core authors were identified, contributing 60 papers (19.54%) to the sample. However, the study noted a low network density (0.0037), indicating limited collaboration among researchers. In terms of institutions, Tianjin University led with 23 publications, followed by Southwest University (16) and Beijing Normal University (12). Vocational colleges and ministry-affiliated research institutions also play significant roles, contributing to policy formulation and guiding practice.

Keyword analysis using betweenness centrality highlighted 'Talent cultivation' (1.00 centrality, 135 frequency) and 'Artificial intelligence' (0.56 centrality, 101 frequency) as key themes. Other significant keywords included 'Higher vocational education', 'Information technology', and 'Industry-education integration'. Clustering analysis identified core research themes such as Vocational Education, Artificial Intelligence, Intelligent Era, Information Technology, School-Enterprise Cooperation, Industry-Education Integration, Digitization, Intelligent Education, Higher Vocational Colleges, Challenges, Applied Research, and Human-Job Matching, demonstrating the diverse facets of AI's influence on vocational education.

  • Research methods are relatively limited in Chinese academia, with a dominance of qualitative approaches and a lack of large-scale data modeling.
  • The field exhibits clear temporal characteristics, with themes evolving in synchronization with societal needs and major events.
  • A lack of cohesion among core author groups and insufficient collaboration hinders the ability to solve complex interdisciplinary problems.
  • The rapid advancements in generative AI technology have significantly increased related literature since 2022, warranting special attention.

Enterprise Process Flow

Retrieve and identify Chinese database (CNKI) n=330
Screening (Type: Academic papers)
The cleaning of irrelevant and duplicate literature
Samples (Finally included n=307)
Analysis (Statistical analysis software: CiteSpace (version 6.3.1))

High-Betweenness Keywords in AI & Vocational Education

Keyword Betweenness Centrality Frequency
Talent cultivatio1.00135
Higher vocational education0.848
Influence0.712
Talent cultivation0.6726
Artificial intelligence0.56101
Integration of industry and education0.4120
Information technology0.215
Value-added evaluation0.201
Intelligent era0.1912
Digitalization0.196
Professional development0.145
Multiple subjects0.141
Digital technology0.133
Professional development0.114

Keyword Clustering in AI & Vocational Education Research

Cluster Name Silhouette Score Main Keywords in Cluster
Vocational Education0.997Vocational Education, Digital Education, Implementation Path
Artificial Intelligence1Artificial Intelligence, Skill Demand, Value
Intelligent Era0.992Intelligent Era, Higher Vocational Education, Vocational Colleges
Information Technology0.97Talent Cultivation, Information Technology, Big Data
School-Enterprise Cooperation0.958Digital Economy, Specialty Construction, School-Enterprise Cooperation
Industry-Education Integration0.917Industry-Education Integration, Ethical Risk, Development Path
Digitization0.861Digitization, Professional Development, Digital Technology
Intelligent Education0.993Intelligent Education, Development, Technological Culture
Higher Vocational Colleges1Higher Vocational Colleges, Collaborative Innovation, Practical Orientation
Challenges0.975Challenges, Employment, Job Displacement
Applied Research1Vocational Education Teachers, Training Platform, Practical System
Human-Job Matching0.993Working World, Industry 4.0, Skill Mismatch

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Strategic Roadmap for AI Integration

Based on the analysis, here are key strategic initiatives to enhance vocational education in the AI era.

Align Research with Industry Needs

Create direct links between academic research priorities and evolving industry demands to ensure educational relevance and impact.

Foster Collaborative Education Models

Develop and implement multidirectional knowledge exchange platforms, such as 'industry-university-research integration,' to promote continuous quality improvement.

Enhance Research Methodology

Adopt mixed-methods research frameworks, combining qualitative and quantitative approaches for more scientific rigor and practical utility in education reform.

Internationalize Vocational Education Research

Actively compare and learn from international practices to broaden the scope and impact of vocational education research in China.

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