论文标题

意见的动力极化

Dynamics of opinion polarization

论文作者

Biondi, E., Boldrini, C., Passarella, A., Conti, M.

论文摘要

几十年来,研究人员一直在试图了解人们如何形成意见。随着在线社交网络和社交媒体的广泛使用,这一追求变得更加紧迫,这似乎扩大了已经存在的两极分化现象。在这项工作中,我们研究了两极分化的问题,假设观点根据流行的弗里德金·约翰逊(FJ)模型而发展。 FJ模型是在中小型社会群体上已验证的少数现有意见动力学模型之一。首先,我们对文献中的FJ模型进行了全面的调查(区分其主要变体)以及许多可用的极化指标,从而导致了它们中的不变关系。其次,我们得出了FJ变体能够在社交网络中引起观点两极分化的条件,这是节点之间的社会联系及其个人对他人意见的敏感性的函数。第三,我们讨论了找到能够将网络带到两极分化状态的具体意见向量的方法。最后,我们的分析结果应用于两个真实的社交网络图,显示了如何使用我们的理论发现来识别各种配置下的极化条件。

For decades, researchers have been trying to understand how people form their opinions. This quest has become even more pressing with the widespread usage of online social networks and social media, which seem to amplify the already existing phenomenon of polarization. In this work, we study the problem of polarization assuming that opinions evolve according to the popular Friedkin-Johnsen (FJ) model. The FJ model is one of the few existing opinion dynamics models that has been validated on small/medium-sized social groups. First, we carry out a comprehensive survey of the FJ model in the literature (distinguishing its main variants) and of the many polarization metrics available, deriving an invariant relation among them. Secondly, we derive the conditions under which the FJ variants are able to induce opinion polarization in a social network, as a function of the social ties between the nodes and their individual susceptibility to the opinion of others. Thirdly, we discuss a methodology for finding concrete opinion vectors that are able to bring the network to a polarized state. Finally, our analytical results are applied to two real social network graphs, showing how our theoretical findings can be used to identify polarizing conditions under various configurations.

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