School of Computer Science and Engineering, Sun Yat-sen University, 510006 Guangzhou, China.
Institute of Future Networks, Southern University of Science and Technology, 518055 Shenzhen, China.
Proc Natl Acad Sci U S A. 2022 Mar 1;119(9). doi: 10.1073/pnas.2100151119.
Percolation theory has been widely used to study phase transitions in network systems. It has also successfully explained various macroscopic spreading phenomena across different fields. Yet, the theoretical frameworks have been focusing on direct interactions among nodes, while recent empirical observations have shown that indirect interactions are common in many network systems like social and ecological networks, among others. By investigating the detailed mechanism of both direct and indirect influence on scientific collaboration networks, here we show that indirect influence can play the dominant role in behavioral influence. To address the lack of theoretical understanding of such indirect influence on the macroscopic behavior of the system, we propose a percolation mechanism of indirect interactions called induced percolation. Surprisingly, our model exhibits a unique anisotropy property. Specifically, directed networks show first-order abrupt transitions as opposed to the second-order continuous transition in the same network structure but with undirected links. A mix of directed and undirected links leads to rich hybrid phase transitions. Furthermore, a unique feature of the nonmonotonic pattern is observed in network connectivities near the critical point. We also present an analytical framework to characterize the proposed induced percolation, paving the way to further understanding network dynamics with indirect interactions.
渗流理论已被广泛应用于研究网络系统中的相变。它还成功地解释了不同领域中的各种宏观扩展现象。然而,理论框架一直集中在节点之间的直接相互作用上,而最近的实证观察表明,在社会和生态网络等许多网络系统中,间接相互作用很常见。通过研究直接和间接影响对科学合作网络的详细机制,我们在这里表明,间接影响可以在行为影响中起主导作用。为了解决对系统宏观行为的这种间接影响缺乏理论理解的问题,我们提出了一种称为诱导渗流的间接相互作用的渗流机制。令人惊讶的是,我们的模型表现出独特的各向异性性质。具体来说,有向网络表现出一级不连续转变,而相同网络结构但无向链接则表现出二级连续转变。有向和无向链接的混合导致了丰富的混合相变。此外,在临界点附近的网络连通性中观察到了非单调模式的独特特征。我们还提出了一个分析框架来描述所提出的诱导渗流,为进一步理解具有间接相互作用的网络动力学铺平了道路。