The effect of structural disparities on knowledge diffusion in networks: an agent-based simulation model

被引:0
作者
Matthias Mueller
Kristina Bogner
Tobias Buchmann
Muhamed Kudic
机构
[1] University of Hohenheim,
[2] Stifterverband,undefined
[3] University of Bremen,undefined
来源
Journal of Economic Interaction and Coordination | 2017年 / 12卷
关键词
Innovation networks; Knowledge diffusion; Agent-based simulation; Scale-free networks;
D O I
暂无
中图分类号
学科分类号
摘要
We apply an agent-based simulation approach to explore how and why typical network characteristics affect overall knowledge diffusion properties. To accomplish this task, we employ an agent-based simulation approach (ABM) which is based on a “barter trade” knowledge diffusion process. Our findings indicate that the overall degree distribution significantly affects a network’s knowledge diffusion performance. Nodes with a below-average number of links prove to be one of the bottlenecks for an efficient transmission of knowledge throughout the analysed networks. This indicates that diffusion-inhibiting overall network structures are the result of the myopic linking strategies of the actors at the micro level. Finally, we implement policy experiments in our simulation environment in order to analyse consequences of selected policy interventions. This complements previous research knowledge on diffusion processes in innovation networks.
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页码:613 / 634
页数:21
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