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社会超网络上的分形信息传播与聚类演化

Fractal information dissemination and clustering evolution on social hypernetwork.

作者信息

Luo Li, Nian Fuzhong, Cui Yuanlin, Li Fangfang

机构信息

School of Computer and Communication, Lanzhou University of Technology, Lanzhou 730050, China.

出版信息

Chaos. 2024 Sep 1;34(9). doi: 10.1063/5.0228903.

Abstract

The complexity of systems stems from the richness of the group interactions among their units. Classical networks exhibit identified limits in the study of complex systems, where links connect pairs of nodes, inability to comprehensively describe higher-order interactions in networks. Higher-order networks can enhance modeling capacities of group interaction networks and help understand and predict network dynamical behavior. This paper constructs a social hypernetwork with a group structure by analyzing a community overlapping structure and a network iterative relationship, and the overlapping relationship between communities is logically separated. Considering the different group behavior pattern and attention focus, we defined the group cognitive disparity, group credibility, group cohesion index, hyperedge strength to study the relationship between information dissemination and network evolution. This study shows that groups can alter the connected network through information propagation, and users in social networks tend to form highly connected groups or communities in information dissemination. Propagation networks with high clustering coefficients promote the fractal information dissemination, which in itself drives the fractal evolution of groups within the network. This study emphasizes the significant role of "key groups" with overlapping structures among communities in group network propagation. Real cases provide evidence for the clustering phenomenon and fractal evolution of networks.

摘要

系统的复杂性源于其单元之间丰富的群体相互作用。经典网络在复杂系统研究中存在明显局限性,其中链接连接节点对,无法全面描述网络中的高阶相互作用。高阶网络可以增强群体相互作用网络的建模能力,有助于理解和预测网络动态行为。本文通过分析社区重叠结构和网络迭代关系构建了具有群体结构的社会超网络,并且从逻辑上分离了社区之间的重叠关系。考虑到不同的群体行为模式和关注焦点,我们定义了群体认知差异、群体可信度、群体凝聚指数、超边强度来研究信息传播与网络演化之间的关系。本研究表明,群体可以通过信息传播改变连通网络,社交网络中的用户在信息传播中倾向于形成高度连通的群体或社区。具有高聚类系数的传播网络促进分形信息传播,这本身推动了网络内群体的分形演化。本研究强调了社区间具有重叠结构的“关键群体”在群体网络传播中的重要作用。实际案例为网络的聚类现象和分形演化提供了证据。

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