Dynamic Social Networks Generator Based on Modularity: DSNG-M

Binyao Duan, Wenjian Luo, Hao Jiang, Li Ni
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引用次数: 5

Abstract

Continuous change is one of the key features of social networks, and the analysis and mining of dynamic social networks are of significant value. However, it is not easy to obtain real-world dynamic social networks. Thus, the artificial generation of dynamic social networks is very valuable. The dynamic social network generators that exist thus far usually generate social networks with specific operations, such as edge/node add/delete and community merge/split. In this paper, we describe the design of a dynamic social network generator based on modularity, called DSNG-M. DSNG-M initially takes a static social network and by flipping edges generates time-evolving social networks with the expected modularity, where the expected modularity at each time step is calculated based on the community structure of the original static social network. Thus, the generated networks and the original network have a common intrinsic structure, while the connections between nodes vary in the evolutionary process. We conducted experiments to analyze the change in the network characteristics of the generated social networks, such as the number of edges, degrees of nodes, and average distances between nodes. Experiments were also conducted to verify that the aggregation of multi-temporal social networks can reflect the community structure of the original social network and to analyze the effects of the generator's parameter on the time cost.
基于模块化的动态社会网络生成器:DSNG-M
持续变化是社会网络的重要特征之一,对动态社会网络的分析和挖掘具有重要的价值。然而,要获得真实世界的动态社会网络并不容易。因此,人工生成动态社交网络是非常有价值的。目前存在的动态社交网络生成器通常生成带有特定操作的社交网络,如边缘/节点添加/删除和社区合并/分裂。本文描述了基于模块化的动态社交网络生成器DSNG-M的设计。DSNG-M首先采用静态社交网络,通过翻转边缘生成具有期望模块化的随时间进化的社交网络,其中每个时间步的期望模块化是基于原始静态社交网络的社区结构计算的。因此,生成的网络和原始网络具有共同的内在结构,而节点之间的连接在进化过程中是不同的。我们进行了实验来分析生成的社交网络的网络特征的变化,如边的数量、节点的程度和节点之间的平均距离。通过实验验证了多时相社会网络的聚合能够反映原始社会网络的社区结构,并分析了生成器参数对时间成本的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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