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Using exponential random graph (p#x2217;) models to generate social networks in artificial society

机译:使用指数随机图(P * / sup>)模型来生成人工社会中的社交网络

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Artificial society, which is a bottom-up method, has become a significant mean of studying complexity and complex phenomena in human society. Social networks play an important role in the research of social interaction among people, and are also key components of the artificial society. A good social network model should be both estimable and representable. Exponential random graph (p∗) models (ERGMs) can satisfy the requirements. In this paper, ERGMs are applied to the generation of social networks in the artificial society, and a general process of generating social networks is proposed. As a case study, friendship networks in an artificial classroom are generated based on the statnet suite. The results indicate that ERGMs are efficient to generate social networks, and this method is practicable and worthy of application.
机译:人工社会是自下而上的方法,已成为研究人类社会复杂性和复杂现象的重要效果。社交网络在人们之间的社会互动研究中发挥着重要作用,也是人造社会的关键组成部分。良好的社交网络模型应该是可估计和可代表性的。指数随机图(p * )模型(ERGMS)可以满足要求。在本文中,ERGMS应用于人工社会中的社交网络的产生,提出了一种生成社交网络的一般过程。作为一个案例研究,基于Statnet套件生成人工教室中的友谊网络。结果表明,ERGMS有效地生成社交网络,这种方法是可行的,值得应用。

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