Adjustment of knowledge-connection structure affects the performance of knowledge transfer
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摘要
The influences of the network properties on the transfer of knowledge within the network have been extensively studied. However, the “knowledge” properties of the network largely less-attended in literature. In this paper we investigate whether the performance of knowledge transfer in a network can be influenced by adjusting the “knowledge-connection” structure of that network, as a primitive attempt to study knowledge transfer from the aspect of the “knowledge” properties of the network. By the “knowledge-connection” structure we mean the network structure that describes the knowledge distribution within the network. Therefore, the agent-based modeling approach is adopted in this paper to compare the performance of knowledge transfer in a series of networks which differ from one another in their “knowledge-connection” structures. The results of computational simulations illustrate that the network adjustment to increase the knowledge diversity in the directly-connected agent-pairs is helpful for improving the overall performance of knowledge transfer in the entire network in the short term; but the improvement of the long-term performance is less significant. Especially, if the local knowledge-exchange follows the mutually-advantageous bidirectional-knowledge-diffusion (BKD) model, the proposed network adjustment would instead hamper the long-term effectiveness of knowledge transfer. Further investigations show that the limitations can be overcome by adopting a periodical re-adjustment mechanism, through which the knowledge diversity in the network is maintained and persistent knowledge flow becomes possible.
论文关键词:Knowledge transfer,Knowledge connection structure,Network structure adjustment,Agent-based modeling
论文评审过程:Available online 2 June 2011.
论文官网地址:https://doi.org/10.1016/j.eswa.2011.05.054