Moore Jack Murdoch, Small Michael, Yan Gang, Yang Huijie, Gu Changgui, Wang Haiying
MOE Key Laboratory of Advanced Micro-Structured Materials, and School of Physical Science and Engineering, Tongji University, Shanghai 200092, People's Republic of China.
National Key Laboratory of Autonomous Intelligent Unmanned Systems, MOE Frontiers Science Center for Intelligent Autonomous Systems, Tongji University, Shanghai 200092, People's Republic of China.
Phys Rev Lett. 2024 Jun 7;132(23):237401. doi: 10.1103/PhysRevLett.132.237401.
Continuous-state network spreading models provide critical numerical and analytic insights into transmission processes in epidemiology, rumor propagation, knowledge dissemination, and many other areas. Most of these models reflect only local features such as adjacency, degree, and transitivity, so can exhibit substantial error in the presence of global correlations typical of empirical networks. Here, we propose mitigating this limitation via a network property ideally suited to capturing spreading. This is the network correlation dimension, which characterizes how the number of nodes within range of a source typically scales with distance. Applying the approach to susceptible-infected-recovered processes leads to a spreading model which, for a wide range of networks and epidemic parameters, can provide more accurate predictions of the early stages of a spreading process than important established models of substantially higher complexity. In addition, the proposed model leads to a basic reproduction number that provides information about the final state not available from popular established models.
连续状态网络传播模型为流行病学、谣言传播、知识传播及许多其他领域的传播过程提供了关键的数值和分析见解。这些模型大多仅反映局部特征,如邻接性、度和传递性,因此在存在经验网络典型的全局相关性时可能会出现较大误差。在此,我们提出通过一种非常适合捕捉传播的网络属性来减轻这一限制。这就是网络关联维数,它表征了源范围内节点数量通常如何随距离缩放。将该方法应用于易感-感染-康复过程,得到了一个传播模型,对于广泛的网络和流行病参数,该模型在传播过程早期阶段能比复杂度高得多的重要现有模型提供更准确的预测。此外,所提出的模型还得出了一个基本再生数,该数提供了关于最终状态的信息,而这些信息是流行的现有模型所没有的。