Takaguchi Taro, Hasegawa Takehisa, Yoshida Yuichi
National Institute of Informatics, 2-1-2 Hitotsubashi, Chiyoda-ku, Tokyo, 101-8430, Japan and JST, ERATO, Kawarabayashi Large Graph Project, Japan.
Graduate School of Information Science, Tohoku University, 6-3-09, Aramaki-Aza-Aoba, Sendai, Miyagi, 980-8579, Japan.
Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Jul;90(1):012807. doi: 10.1103/PhysRevE.90.012807. Epub 2014 Jul 11.
To control infection spreading on networks, we investigate the effect of observer nodes that recognize infection in a neighboring node and make the rest of the neighbor nodes immune. We numerically show that random placement of observer nodes works better on networks with clustering than on locally treelike networks, implying that our model is promising for realistic social networks. The efficiency of several heuristic schemes for observer placement is also examined for synthetic and empirical networks. In parallel with numerical simulations of epidemic dynamics, we also show that the effect of observer placement can be assessed by the size of the largest connected component of networks remaining after removing observer nodes and links between their neighboring nodes.
为了控制感染在网络上的传播,我们研究了观察者节点的作用,这些节点能够识别相邻节点中的感染情况,并使其余相邻节点产生免疫。我们通过数值模拟表明,观察者节点的随机放置在具有聚类特性的网络上比在局部树状网络上效果更好,这意味着我们的模型在现实社交网络中具有应用前景。我们还针对合成网络和实证网络研究了几种观察者放置启发式方案的效率。在进行流行病动力学数值模拟的同时,我们还表明,可以通过移除观察者节点及其相邻节点之间的链接后剩余网络的最大连通分量的大小来评估观察者放置的效果。