论文标题
模块化会影响在中间和基于学位的节点攻击下的无规模模型和现实世界社交网络的鲁棒性
Modularity affects the robustness of scale-free model and real-world social networks under betweenness and degree-based node attack
论文作者
论文摘要
在本文中,我们研究了基于节点学位(ID)和节点介绍(IB)的模型和现实社交网络的模块化如何影响其稳健性以及节点攻击(删除)策略的功效。我们通过一种新的临时算法建立了具有不同模块化的Barabasi-Albert模型网络,该算法将网络与社区结构联系起来。我们使用最大的连接组件(LCC)追踪了网络鲁棒性。我们发现,在两种攻击策略下,更高水平的模块化都会降低模型网络鲁棒性,即具有较高社区结构的模型网络在删除节点时显示出更快的LCC中断。非常有趣的是,我们发现,当模型网络显示出非模块化结构或低模块化时,基于学位的(ID)比基于中间的节点攻击策略(IB)更有效。相反,在模型网络呈现较高的模块化的情况下,IB策略显然变得最有效地分解了LCC。最后,我们研究了通过模块化指标(Q)评估网络结构的模块化如何影响12个现实世界社交网络中攻击策略的鲁棒性和功效。我们发现,模块化Q与IB节点攻击策略下的现实世界社交网络的鲁棒性负相关(P值<0.001)。该结果表明,具有较高模块化(即具有较高社区结构)的现实世界网络可能对基于基于基础的节点攻击更脆弱。本文介绍的结果揭示了模块化和社区结构在网络鲁棒性方面的作用,对于选择网络中最佳的节点攻击策略可能很有用。
In this paper we investigate how the modularity of model and real-world social networks affect their robustness and the efficacy of node attack (removal) strategies based on node degree (ID) and node betweenness (IB). We build Barabasi-Albert model networks with different modularity by a new ad hoc algorithm that rewire links forming networks with community structure. We traced the network robustness using the largest connected component (LCC). We find that higher level of modularity decreases the model network robustness under both attack strategies, i.e. model network with higher community structure showed faster LCC disruption when subjected to node removal. Very interesting, we find that when model networks showed non-modular structure or low modularity, the degree-based (ID) is more effective than the betweenness-based node attack strategy (IB). Conversely, in the case the model network present higher modularity, the IB strategies becomes clearly the most effective to fragment the LCC. Last, we investigated how the modularity of the network structure evaluated by the modularity indicator (Q) affect the robustness and the efficacy of the attack strategies in 12 real-world social networks. We found that the modularity Q is negatively correlated with the robustness of the real-world social networks under IB node attack strategy (p-value< 0.001). This result indicates how real-world networks with higher modularity (i.e. with higher community structure) may be more fragile to betwenness-based node attack. The results presented in this paper unveil the role of modularity and community structure for the robustness of networks and may be useful to select the best node attack strategies in network.