| Literature DB >> 28883456 |
Jian-Guo Liu1, Qing Zhou2, Qiang Guo2, Zhen-Hua Yang3,4, Fei Xie5, Jing-Ti Han3.
Abstract
In this paper, we present a knowledge diffusion (SKD) model for dynamic networks by taking into account the interaction frequency which always used to measure the social closeness. A set of agents, which are initially interconnected to form a random network, either exchange knowledge with their neighbors or move toward a new location through an edge-rewiring procedure. The activity of knowledge exchange between agents is determined by a knowledge transfer rule that the target node would preferentially select one neighbor node to transfer knowledge with probability p according to their interaction frequency instead of the knowledge distance, otherwise, the target node would build a new link with its second-order neighbor preferentially or select one node in the system randomly with probability 1 - p. The simulation results show that, comparing with the Null model defined by the random selection mechanism and the traditional knowledge diffusion (TKD) model driven by knowledge distance, the knowledge would spread more fast based on SKD driven by interaction frequency. In particular, the network structure of SKD would evolve as an assortative one, which is a fundamental feature of social networks. This work would be helpful for deeply understanding the coevolution of the knowledge diffusion and network structure.Entities:
Year: 2017 PMID: 28883456 PMCID: PMC5589912 DOI: 10.1038/s41598-017-11057-8
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Schematic illustration of the presented model. The nodes represent the agents and the edge weight τ represents the interaction frequency between the agents. The grey node i represents the target node which is randomly selected, and the node i will exchange knowledge with one of the neighbors or build new link with other nodes. Subplot (a) shows the original network structure. As the sender, node j and m are the neighbors of node i. The node n is one of the neighbors of the node j, while the node e is another randomly selected node. And subplot (b) shows the knowledge diffusion process of node i exchanging knowledge with node j. The network structure evolution is shown in the subplot (c) and (d), while the dash line is the broken edge.
Figure 2The results of knowledge diffusion and network structure evolution in SKD model and Null model (w = 0.3 and p = 0.5). Each simulation result is obtained by averaging over 100 independent runs.
Figure 3The results of knowledge diffusion and network structure evolution in the SKD model and TKD model (w = 0.3 and p = 0.5). Each simulation result is obtained by averaging over 100 independent runs. When the time step t = 30000, in the TKD model, the average knowledge stock reach a stable state of the average knowledge stock and the assortative coefficient while in SKD model.
Figure 4The influence of the change of p on knowledge diffusion and network structure(w = 0.3). Each point is obtained by averaging over 100 independent runs.
Figure 5The influence of the change of w on knowledge diffusion and network structure(p = 0.5). Each simulation result is obtained by averaging over 100 independent runs.