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Comparison of Opinion Polarization on Single-Layer and Multiplex Networks

机译:单层和多路复用网络的意见极化比较

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This paper investigates how opinions are polarized by simulating opinion formation with Q-learning in multiplex networks. People sometimes change their opinions to accommodate themselves to the surrounding people in communities, but opinions may still be polarized. To investigate the mechanism of opinion polarization, many studies including studies using agent-based simulations were conducted, but most of these simulations were performed by assuming that people belong to a single community. A number of studies assumed multiple communities, but they usually considered only simple opinion formation methods and more studies are needed. In this paper, we propose an opinion formation model on multiplex networks using Q-learning for agents to identify better individual opinions and analyze how opinions are polarized or agreed on various network structures. Our experiments indicate that opinions are more likely to lead to a consensus on multiplex networks than on single-layer networks. They also suggested that opinions are easily polarized when their cluster coefficient were high and the characteristic path length were longer.
机译:本文调查了通过在多路复用网络中模拟Q-Learning的意见形成,如何通过模拟意见来极化。人们有时会改变他们的意见,以适应社区的周围的人,但意见可能仍然是极化的。为了调查意见极化的机制,许多研究包括使用基于代理的模拟的研究,但大多数这些模拟是通过假设人们属于一个社区来进行的。许多研究假定了多个社区,但它们通常仅考虑简单的意见形成方法,并且需要更多的研究。在本文中,我们向多路复用网络提出了一种使用Q-Learning进行了多重网络的意见形成模型,以确定更好的个人意见,并分析意见是如何对各种网络结构达成的意见。我们的实验表明,意见更有可能导致多路复用网络的共识,而不是单层网络。他们还建议当它们的簇系数高并且特征路径长度更长时意见很偏振。

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