Zhang Wenjun, Chen Xiangna, Deng Weibing
School of Medical Information Engineering, Anhui University of Chinese Medicine, Hefei 230012, China.
College of Science, Henan University of Engineering, Zhengzhou 451191, China.
Entropy (Basel). 2025 Apr 12;27(4):419. doi: 10.3390/e27040419.
The L-space and P-space are two essential representations for studying complex networks that contain different clusters. Existing network models can successfully generate networks in L-space, but generating networks in P-space poses significant challenges. In this study, we present an empirical analysis of the distribution of the number of a line's nodes and the properties of the networks generated by these data in P-space. To gain insights into the operational mechanisms of the network of these data, we propose an event-link model that incorporates new nodes and links in P-space based on actual data characteristics using real data from marine and public transportation networks. The entire network consists of a series of events that consist of many nodes, and all nodes in an event are connected in the P-space. We conduct simulation experiments to explore the model's topological features under different parameter conditions, demonstrating that the simulation outcomes are consistent with the theoretical analysis of the model. This model exhibits small-world characteristics, scale-free behavior, and a high clustering coefficient. The event-link model, with its adjustable parameters, effectively generates networks with stable structures that closely resemble the statistical characteristics of real-world networks that share similar growth mechanisms. Moreover, the network's growth and evolution can be flexibly adjusted by modifying the model parameters.
L空间和P空间是研究包含不同簇的复杂网络的两种重要表示形式。现有的网络模型能够成功地在L空间中生成网络,但在P空间中生成网络则面临重大挑战。在本研究中,我们对P空间中一条线的节点数量分布以及由这些数据生成的网络属性进行了实证分析。为了深入了解这些数据网络的运行机制,我们基于海洋和公共交通网络的实际数据,提出了一种事件-链接模型,该模型根据实际数据特征在P空间中纳入新节点和链接。整个网络由一系列包含许多节点的事件组成,且一个事件中的所有节点在P空间中相互连接。我们进行了模拟实验,以探索该模型在不同参数条件下的拓扑特征,结果表明模拟结果与模型的理论分析一致。该模型具有小世界特征、无标度行为和高聚类系数。具有可调整参数的事件-链接模型有效地生成了结构稳定的网络,这些网络与具有相似增长机制的真实世界网络的统计特征非常相似。此外,通过修改模型参数,可以灵活调整网络的增长和演化。