Emergence of scale-free close-knit friendship structure in online social networks
Ai-xiang Cui, Zi-ke Zhang, Ming Tang, Pak Ming Hui, and Yan Fu

TL;DR
This paper investigates the structural properties of close-knit friendship groups in online social networks, revealing common scaling laws and proposing a simple directed network model that captures these mesoscale features.
Contribution
It introduces a directed network model incorporating reciprocation and preferential attachment, explaining the emergence of observed scaling behaviors in local and mesoscale structures.
Findings
Degree distributions follow power-law scaling.
Close-knit friendship structures exhibit similar power-law distributions.
Weak degree correlations across the network.
Abstract
Despite the structural properties of online social networks have attracted much attention, the properties of the close-knit friendship structures remain an important question. Here, we mainly focus on how these mesoscale structures are affected by the local and global structural properties. Analyzing the data of four large-scale online social networks reveals several common structural properties. It is found that not only the local structures given by the indegree, outdegree, and reciprocal degree distributions follow a similar scaling behavior, the mesoscale structures represented by the distributions of close-knit friendship structures also exhibit a similar scaling law. The degree correlation is very weak over a wide range of the degrees. We propose a simple directed network model that captures the observed properties. The model incorporates two mechanisms: reciprocation and…
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