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Weighted social networks for a large scale artificial society

机译:大规模人工社会的加权社交网络

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摘要

The method of artificial society has provided a powerful way to study and explain how individual behaviors at micro level give rise to the emergence of global social phenomenon. It also creates the need for an appropriate representation of social structure which usually has a significant influence on human behaviors. It has been widely acknowledged that social networks are the main paradigm to describe social structure and reflect social relationships within a population. To generate social networks for a population of interest, considering physical distance and social distance among people, we propose a generation model of social networks for a large-scale artificial society based on human choice behavior theory under the principle of random utility maximization. As a premise, we first build an artificial society through constructing a synthetic population with a series of attributes in line with the statistical (census) data for Beijing. Then the generation model is applied to assign social relationships to each individual in the synthetic population. Compared with previous empirical findings, the results show that our model can reproduce the general characteristics of social networks, such as high clustering coefficient, significant community structure and small-world property. Our model can also be extended to a larger social micro-simulation as an input initial. It will facilitate to research and predict some social phenomenon or issues, for example, epidemic transition and rumor spreading.
机译:人工社会的方法为研究和解释微观层面的个人行为如何引起全球社会现象的出现提供了强有力的途径。它还需要适当地表示社会结构,这通常会对人类行为产生重大影响。众所周知,社交网络是描述社会结构并反映人口内部社会关系的主要范例。为了生成关注人群的社交网络,考虑人类之间的物理距离和社交距离,我们在随机效用最大化的基础上,基于人类选择行为理论,提出了一种大型人工社会社交网络的生成模型。作为前提,我们首先通过构建具有一系列与北京的统计(人口普查)数据相一致的属性的综合人口来构建人工社会。然后,将世代模型应用于为社会人口中的每个人分配社会关系。与以往的经验发现相比,结果表明我们的模型可以重现社交网络的一般特征,例如高聚类系数,重要的社区结构和小世界属性。我们的模型还可以扩展为更大的社交微观模拟,作为输入的缩写。这将有助于研究和预测一些社会现象或问题,例如流行病的转变和谣言的传播。

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