Interdisciplinary Knowledge Flow in International Higher Education Research: Characteristics and Mechanisms
Abstract
:1. Introduction
2. Theoretical Framework
3. Methodology
3.1. Data Selection and Processing
3.2. Research Tools and Measurement Methods
4. Results
4.1. Knowledge Slope and Interdisciplinary Knowledge Flow in HER
4.2. Knowledge Stickiness and Interdisciplinary Knowledge Flow in HER
4.3. Medium Permeability and Interdisciplinary Knowledge Flow in HER
5. Discussion
5.1. Characterization of Interdisciplinary Knowledge Flows in HER
5.1.1. The Direction of Interdisciplinary Knowledge Flows in HER Is Knowledge-Importing
5.1.2. Interdisciplinary Knowledge Flows in HER Present Knowledge Networks of Family Resemblance
5.2. Mechanism of Interdisciplinary Knowledge Flow in HER
5.2.1. Knowledge Slopes Facilitate Interdisciplinary Knowledge Flows in HER
5.2.2. Knowledge Stickiness Hinders Interdisciplinary Knowledge Flow in HER
5.2.3. Medium Permeability Determines the Interdisciplinary Knowledge Flow in HER
6. Conclusions and Implications
7. Limitations and Future Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Knowledge Absorption | Knowledge Diffusion |
---|---|
Acoustics | Materials Science Paper Wood |
Anatomy Morphology | Medieval Renaissance Studies |
Materials Science, Characterization and Testing | Polymer Science |
Materials Science, Coatings and Films | Allergy |
Meteorology Atmospheric Sciences | Engineering Petroleum |
Mineralogy | Mycology |
Ornithology | Physics Nuclear |
Quantum Science and Technology | Quantum Science Technology |
WOS Category | N | 302,111 |
---|---|---|
Eduation and Educational Research | 114,115 | 37.77% |
Management | 16,201 | 5.36% |
Sociology | 11,378 | 3.77% |
Psychology, Educational | 111,213 | 3.71% |
Economics | 10,364 | 3.43% |
Psychology, Applied | 9560 | 3.16% |
Business | 8970 | 2.97 |
Psychology, Multidisciplinary | 7581 | 2.51% |
Green and Sustainable Science and Technology | 7330 | 2.43% |
Psychology, Social | 5987 | 1.98% |
Environmental Sciences | 5633 | 1.86% |
Social Sciences, Interdisciplinary | 5528 | 1.83% |
Education, Scientific Disciplines | 5005 | 1.66% |
Environmental Studies | 3880 | 1.28% |
Information Science and Library Science | 3332 | 1.10% |
Political Science | 3271 | 1.08% |
Computer Science, Interdisciplinary Applications | 3168 | 1.05% |
Engineering, Environmental | 3112 | 1.03% |
Health Care Sciences and Services | 2827 | 0.94% |
Linguistics | 2740 | 0.91% |
Social Sciences, Mathematical Methods | 2299 | 0.76% |
Multidisciplinary Sciences | 2058 | 0.68% |
Public, Environmental and Occupational Health | 2016 | 0.67% |
Psychology | 2010 | 0.67% |
Psychology, Experimental | 1955 | 0.65% |
Communication | 1872 | 0.62% |
Geography | 1790 | 0.59% |
Statistics and Probability | 1726 | 0.57% |
Industrial Relations and Labor | 1708 | 0.57% |
Public Administration | 1654 | 0.55% |
WOS Category | N | 124,536 |
---|---|---|
Education and Educational Research | 67,495 | 22.42% |
Education Scientific Disciplines | 7108 | 2.36% |
Management | 6142 | 2.04% |
Green Sustainable Science Technology | 4661 | 1.55% |
Environmental Sciences | 4361 | 1.45% |
Psychology Multidisciplinary | 4204 | 1.40% |
Social Sciences Interdisciplinary | 3861 | 1.28% |
Environmental Studies | 3766 | 1.25% |
Psychology Educational | 3465 | 1.15% |
Sociology | 3311 | 1.10% |
Business | 3228 | 1.07% |
Information Science Library Science | 3175 | 1.05% |
Linguistics | 2868 | 0.95% |
Computer Science Interdisciplinary Applications | 2521 | 0.84% |
Economics | 2294 | 0.76% |
Psychology Applied | 2280 | 0.76% |
Public Environmental Occupational Health | 2090 | 0.69% |
Language Linguistics | 2047 | 0.68% |
Nursing | 1893 | 0.63% |
Psychology Social | 1583 | 0.53% |
Engineering Multidisciplinary | 1540 | 0.51% |
Health Care Sciences Services | 1536 | 0.51% |
Multidisciplinary Sciences | 1512 | 0.50% |
Computer Science Information Systems | 1449 | 0.48% |
Communication | 1228 | 0.41% |
Hospitality Leisure Sport Tourism | 1202 | 0.40% |
Geography | 1153 | 0.38% |
Political Science | 1123 | 0.38% |
Public Administration | 1036 | 0.34% |
Social Work | 935 | 0.31% |
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Jia, W.; Pan, L.; Neary, S.; Moore, N. Interdisciplinary Knowledge Flow in International Higher Education Research: Characteristics and Mechanisms. Educ. Sci. 2025, 15, 221. https://doi.org/10.3390/educsci15020221
Jia W, Pan L, Neary S, Moore N. Interdisciplinary Knowledge Flow in International Higher Education Research: Characteristics and Mechanisms. Education Sciences. 2025; 15(2):221. https://doi.org/10.3390/educsci15020221
Chicago/Turabian StyleJia, Wenxiu, Li Pan, Siobhan Neary, and Nicki Moore. 2025. "Interdisciplinary Knowledge Flow in International Higher Education Research: Characteristics and Mechanisms" Education Sciences 15, no. 2: 221. https://doi.org/10.3390/educsci15020221
APA StyleJia, W., Pan, L., Neary, S., & Moore, N. (2025). Interdisciplinary Knowledge Flow in International Higher Education Research: Characteristics and Mechanisms. Education Sciences, 15(2), 221. https://doi.org/10.3390/educsci15020221