Payne Joshua L, Dodds Peter Sheridan, Eppstein Margaret J
Department of Computer Science, The University of Vermont, Burlington, Vermont 05405, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2009 Aug;80(2 Pt 2):026125. doi: 10.1103/PhysRevE.80.026125. Epub 2009 Aug 25.
We investigate by numerical simulation a threshold model of social contagion on degree-correlated random networks. We show that the class of networks for which global information cascades occur generally expands as degree-degree correlations become increasingly positive. However, under certain conditions, large-scale information cascades can paradoxically occur when degree-degree correlations are sufficiently positive or negative, but not when correlations are relatively small. We also show that the relationship between the degree of the initially infected vertex and its ability to trigger large cascades is strongly affected by degree-degree correlations.
我们通过数值模拟研究了度相关随机网络上的社会传染阈值模型。我们表明,随着度-度相关性变得越来越正,发生全局信息级联的网络类别通常会扩大。然而,在某些条件下,当度-度相关性足够正或负时,大规模信息级联可能会自相矛盾地发生,但当相关性相对较小时则不会。我们还表明,初始感染顶点的度与其触发大型级联的能力之间的关系受到度-度相关性的强烈影响。