用规范涌现过程模拟共识形成

C. Hollander, A. Wu
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引用次数: 9

摘要

社会中的每个行动者最初都拥有一套个人规范。群体规范出现在主体之间相互作用和交换信息的过程中,使得多个主体开始获得相同的个人规范。这种出现是信息传递、社会强制和内化的结果。如果一个群体包含一个单一的群体规范,因为群体中的每个个体都获得了相同的个人规范,那么我们可以说群体已经达成了共识。我们通过将最近开发的规范出现模型应用于多智能体模拟,在硅中模拟共识的形成。筛选实验进行,以确定我们的模型的重要参数,并验证我们的模型是能够产生共识。实验结果表明,该模型既能达到一致性,又能达到信息均衡的两种附加状态。研究结果还表明,网络结构和主体行为对共识的形成都起着重要作用。此外,研究表明,共识的形成对仿真参数的设置很敏感,某些数值可以完全阻止共识的形成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using the Process of Norm Emergence to Model Consensus Formation
Every agent in a society initially possesses a set of personal norms. Group norms emerge when agents interact with one another and exchange information in such a way that multiple agents begin to acquire the same personal norm. This emergence is the result of information transmission, social enforcement, and internalization. If a population contains a single group norm, as a result of every agent in the population acquiring the same personal norm, then it can be said that a consensus has been reached by the population. We model the formation of consensus in silico by adapting a recently developed model of norm emergence to a multi-agent simulation. A screening experiment is conducted to identify the significant parameters of our model and verify that our model is capable of producing a consensus. The experimental results show that our model can attain consensus as well as two additional states of information equilibrium. The results also indicate that both network structure and agent behavior play an important role in the formation of consensus. In addition, it is shown that the formation of consensus is sensitive to the simulation parameter settings, and certain values can prevent its formation entirely.
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