Wang Huijuan, Li Qian, D'Agostino Gregorio, Havlin Shlomo, Stanley H Eugene, Van Mieghem Piet
Faculty of Electrical Engineering, Mathematics, and Computer Science, Delft University of Technology, Delft, The Netherlands and Center for Polymer Studies and Department of Physics, Boston University, Boston, Massachusetts 02215, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Aug;88(2):022801. doi: 10.1103/PhysRevE.88.022801. Epub 2013 Aug 2.
Most real-world networks are not isolated. In order to function fully, they are interconnected with other networks, and this interconnection influences their dynamic processes. For example, when the spread of a disease involves two species, the dynamics of the spread within each species (the contact network) differs from that of the spread between the two species (the interconnected network). We model two generic interconnected networks using two adjacency matrices, A and B, in which A is a 2N×2N matrix that depicts the connectivity within each of two networks of size N, and B a 2N×2N matrix that depicts the interconnections between the two. Using an N-intertwined mean-field approximation, we determine that a critical susceptible-infected-susceptible (SIS) epidemic threshold in two interconnected networks is 1/λ(1)(A+αB), where the infection rate is β within each of the two individual networks and αβ in the interconnected links between the two networks and λ(1)(A+αB) is the largest eigenvalue of the matrix A+αB. In order to determine how the epidemic threshold is dependent upon the structure of interconnected networks, we analytically derive λ(1)(A+αB) using a perturbation approximation for small and large α, the lower and upper bound for any α as a function of the adjacency matrix of the two individual networks, and the interconnections between the two and their largest eigenvalues and eigenvectors. We verify these approximation and boundary values for λ(1)(A+αB) using numerical simulations, and determine how component network features affect λ(1)(A+αB). We note that, given two isolated networks G(1) and G(2) with principal eigenvectors x and y, respectively, λ(1)(A+αB) tends to be higher when nodes i and j with a higher eigenvector component product x(i)y(j) are interconnected. This finding suggests essential insights into ways of designing interconnected networks to be robust against epidemics.
大多数现实世界中的网络并非孤立存在。为了充分发挥功能,它们与其他网络相互连接,而这种互连会影响其动态过程。例如,当疾病传播涉及两个物种时,每个物种内部(接触网络)的传播动态与两个物种之间(互连网络)的传播动态有所不同。我们使用两个邻接矩阵A和B对两个一般的互连网络进行建模,其中A是一个2N×2N矩阵,描绘了两个规模为N的网络中每个网络内部的连通性,B是一个2N×2N矩阵,描绘了这两个网络之间的互连情况。通过N交织平均场近似,我们确定两个互连网络中的临界易感-感染-易感(SIS)流行病阈值为1/λ(1)(A + αB),其中两个单独网络中每个网络的感染率为β,两个网络之间互连链路的感染率为αβ,且λ(1)(A + αB)是矩阵A + αB的最大特征值。为了确定流行病阈值如何依赖于互连网络的结构,我们使用针对小α和大α的微扰近似、作为两个单独网络的邻接矩阵以及它们之间的互连及其最大特征值和特征向量的函数的任意α的上下界,来解析推导λ(1)(A + αB)。我们使用数值模拟验证这些λ(1)(A + αB)的近似值和边界值,并确定组件网络特征如何影响λ(1)(A + αB)。我们注意到,给定两个分别具有主特征向量x和y的孤立网络G(1)和G(2),当具有较高特征向量分量乘积x(i)y(j)的节点i和j相互连接时,λ(1)(A + αB)往往会更高。这一发现为设计对流行病具有鲁棒性的互连网络的方法提供了重要见解。