Li Cong, Wang Huijuan, Van Mieghem Piet
Faculty of Electrical Engineering, Mathematics and Computer Science, Delft University of Technology, Delft, The Netherlands.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Dec;88(6):062802. doi: 10.1103/PhysRevE.88.062802. Epub 2013 Dec 2.
Epidemics have so far been mostly studied in undirected networks. However, many real-world networks, such as the online social network Twitter and the world wide web, on which information, emotion, or malware spreads, are directed networks, composed of both unidirectional links and bidirectional links. We define the directionality ξ as the percentage of unidirectional links. The epidemic threshold τ(c) for the susceptible-infected-susceptible (SIS) epidemic is lower bounded by 1/λ(1) in directed networks, where λ(1), also called the spectral radius, is the largest eigenvalue of the adjacency matrix. In this work, we propose two algorithms to generate directed networks with a given directionality ξ. The effect of ξ on the spectral radius λ(1), principal eigenvector x(1), spectral gap (λ(1)-|λ(2)|), and algebraic connectivity μ(N-1) is studied. Important findings are that the spectral radius λ(1) decreases with the directionality ξ, whereas the spectral gap and the algebraic connectivity increase with the directionality ξ. The extent of the decrease of the spectral radius depends on both the degree distribution and the degree-degree correlation ρ(D). Hence, in directed networks, the epidemic threshold is larger and a random walk converges to its steady state faster than that in undirected networks with the same degree distribution.
到目前为止,流行病大多是在无向网络中进行研究的。然而,许多现实世界的网络,如在线社交网络推特和万维网,在这些网络上信息、情感或恶意软件得以传播,它们都是由单向链接和双向链接组成的有向网络。我们将方向性ξ定义为单向链接的百分比。在有向网络中,易感-感染-易感(SIS)流行病的流行阈值τ(c) 以1/λ(1)为下界,其中λ(1),也称为谱半径,是邻接矩阵的最大特征值。在这项工作中,我们提出了两种算法来生成具有给定方向性ξ的有向网络。研究了ξ对谱半径λ(1)、主特征向量x(1)、谱隙(λ(1)-|λ(2)|)和代数连通性μ(N - 1)的影响。重要发现是谱半径λ(1) 随方向性ξ减小,而谱隙和代数连通性随方向性ξ增加。谱半径减小的程度取决于度分布和度-度相关性ρ(D)。因此,在有向网络中,流行阈值更大,并且与具有相同度分布的无向网络相比,随机游走收敛到其稳态的速度更快。