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具有社团特征的社交网络建模方法 被引量:3

Social Network Model with Community Characteristics
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摘要 随着互联网的发展,在线社交媒体的应用与生活越来越紧密,其中微博在国内应用尤其广泛。因此,着重研究微博的网络特征,分析信息的产生、传播、扩散过程,通过有向图模拟微博网络结构,根据相关文献梳理目前已有的社交网络建模方式,并提出了一种能够模拟微博社团特性的社交网络模型。该模型参考小世界网络、无标度网络等复杂网络的建模方法,结合微博网络的双边特征,充分体现社团结构,给出了模型的建模流程,为社交网络建模提供了新思路。 With the development of the Internet, the application of online social media becomes more closely related to people’s life, micro-blog is especially widely used in China. In view of this, discussion is focused on the network features of micro-blog, the production, spreading and diffusion of information analyzed. Meanwhile, by using a directed graph, the structure of the micro-blog network is simulated, and based on relevant literature, the existing social network modeling methods combed up. A social network model that can simulate the characteristics of micro-blog community is proposed, and by referring to the modeling method of complex networks such as small world network and scale-free network, combined with the bilateral features of the micro-blog network, the structure of the community is fully embodied. Finally the modeling process of the model is given, thus providing some new ideas for social network modeling.
出处 《通信技术》 2018年第2期376-380,共5页 Communications Technology
关键词 社交网路 微博 社团 复杂网络 social network micro-blog community complex network
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