EN

论文

当前位置: 首页 > 科学研究 > 科研成果 > 论文 > 正文

Review mechanism promotes knowledge transmission in complex networks

来源: | 发布时间:2021-03-05| 点击:

作者:Wang, HY (Wang, Haiying)[ 1 ] ; Wang, J (Wang, Jun)[ 1 ] ; Small, M (Small, Michael)[ 2,3 ] ; Moore, JM (Moore, Jack Murdoch)[ 2 ]

APPLIED MATHEMATICS AND COMPUTATION

卷: 340页: 113-125

DOI: 10.1016/j.amc.2018.07.051

出版年: JAN 1 2019

文献类型:Review

摘要

Knowledge transmission systems differ from epidemic spreading systems in that people who have forgotten knowledge can reacquire it through reviewing. In order to analyze the review mechanism, we propose a Naive-Evangelical-Agnostic (VEA) knowledge transmission model in complex networks. Specifically, we derive a knowledge transmission system in homogeneous and heterogeneous networks, respectively. Mean field theory is used to theoretically delineate the knowledge transmission systems. In homogeneous networks, the steady state solution of the system is obtained. In heterogeneous networks, we get the basic reproduction number R-0, in which the reviewing rate is an important parameter. Moreover, we analyze the system and prove that if R-0 < 1, the knowledge loss equilibrium of the model is globally asymptotically stable; if R-0 > 1, the knowledge is permanent. In addition, to complement the theoretical analysis, numerical simulations are performed in four representative network models: random regular, small world, random growth and scale free networks. The simulation results indicate that the review mechanism has a clear positive influence for the knowledge transmission in the four networks, i.e., a higher reviewing rate leads to a higher final density of evangelical nodes. In addition, the simulation results illustrate that scale free networks transfer knowledge faster than the other three networks. (C) 2018 Elsevier Inc. All rights reserved.

关键词

作者关键词:Knowledge transmission; Review mechanism; Complex networks; Equilibrium

KeyWords Plus:SCALE-FREE NETWORKS; SOCIAL NETWORKS; MODEL; DIFFUSION; EMERGENCE; DYNAMICS; PATTERNS; MEMORY

通讯作者地址:

Beihang University Beihang Univ, Sch Econ & Management, Beijing 100191, Peoples R China.

通讯作者地址: Wang, J (通讯作者)