Abstract
AbstractThis paper takes the industry-university-research cooperation innovation network constructed by the weighted evolutionary BBV model as the research object, which is based on bipartite graph and evolutionary game theory, and constructing the game model of knowledge transfer in the industry-university-research cooperation innovation network, by using the simulation analysis method and analyzing the evolution law of knowledge transfer in the industry-university-research cooperation innovation network under different network scales, three scenarios, the knowledge transfer coefficient and the knowledge reorganization coefficient. The results show that the increase of network scale reduces the speed of knowledge transfer in the network, and the greater the average cooperation intensity of the nodes, the higher the evolution depth of knowledge transfer. Compared with university-research institutes, the evolution depth of knowledge transfer in enterprises is higher, and with the increase of network scale, the gap between the evolution depth of knowledge transfer between them is gradually increasing. Only when reward, punishment and synergistic innovation benefits are higher than the cost of knowledge transfer that can promote the benign evolution of industry-university-research cooperation innovation networks. Only when the knowledge transfer coefficient and the knowledge reorganization coefficient exceed a certain threshold will knowledge transfer behavior emerge in the network. With the increase of the knowledge transfer coefficient and the knowledge reorganization coefficient, the knowledge transfer evolutionary depth of the average cooperation intensity of all kinds of nodes is gradually deepening.
Publisher
Springer Science and Business Media LLC
Reference49 articles.
1. Yuan, J. F. & Xu, Z. Research on the Structural Characteristics and Evolution of Industry-University- Research Cooperation Networks in China: Based on Analysis of Patent Data from 1985 to 2013 Years. Chinese Journal of Management. 14, 1024–1032 (2017).
2. Li, J. H. & Chang, X. R. The Influence Factors of Knowledge Transfer: a Meta – Analytic Review. Studies in Science of Science. 31, 394–406 (2013).
3. Cowan, R. & Jonard, N. Knowledge Creation, Knowledge Diffusion and Network Structure. Lecture Notes in Economics & Mathematical Systems. 503, 327–343 (2001).
4. Melamed, D. & Simpson, B. Strong Ties Promote the Evolution of Cooperation in Dynamic Networks. Social Networks. 45, 32–44 (2016).
5. Lin, Z., Fu, B. B. & Li, Y. X. Cascading Failure of Urban Weighted Public Transit Network Under Single Station Happening Emergency. Procedia Engineering. 137, 259–266 (2016).
Cited by
26 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献