A Knowledge Generation Model via the Hypernetwork

作者:Liu, Jian-Guo*; Yang, Guang-Yong; Hu, Zhao-Long
来源:PLos One, 2014, 9(3): e89746.
DOI:10.1371/journal.pone.0089746

摘要

The influence of the statistical properties of the network on the knowledge diffusion has been extensively studied. However, the structure evolution and the knowledge generation processes are always integrated simultaneously. By introducing the Cobb-Douglas production function and treating the knowledge growth as a cooperative production of knowledge, in this paper, we present two knowledge-generation dynamic evolving models based on different evolving mechanisms. The first model, named "HDPH model," adopts the hyperedge growth and the hyperdegree preferential attachment mechanisms. The second model, named "KSPH model," adopts the hyperedge growth and the knowledge stock preferential attachment mechanisms. We investigate the effect of the parameters (alpha, beta) on the total knowledge stock of the two models. The hyperdegree distribution of the HDPH model can be theoretically analyzed by the mean-field theory. The analytic result indicates that the hyperdegree distribution of the HDPH model obeys the power-law distribution and the exponent is gamma = 2+1/m. Furthermore, we present the distributions of the knowledge stock for different parameters (alpha, beta). The findings indicate that our proposed models could be helpful for deeply understanding the scientific research cooperation.