论文标题

使用起搏和领先来缓解反射效应

Mitigating the Backfire Effect Using Pacing and Leading

论文作者

Yang, Qi, Qureshi, Khizar, Zaman, Tauhid

论文摘要

在线社交网络创建了回声室,人们很少会面对反对意见。即使发生这种暴露,有说服力的效果也可能很小或不存在。最近的研究表明,接触反对意见会导致反向反击的影响,在这种情况下,人们在最初的信念中变得更加坚定。我们在Twitter上进行了纵向野外实验,以测试减轻反向效果的方法,同时使人们采取反对意见。我们的受试者是具有反移民情绪的Twitter用户。反向效应的定义是受试者帖子中极端反移民语言的使用频率的增加。我们使用自动化的Twitter帐户或机器人为受试者应用不同的治疗方法。一个机器人仅发布亲迁移内容,我们称之为争论。另一个机器人最初发布了反移民内容,然后逐渐发布了更多的亲迁移内容,我们将其称为起搏和领导。我们还与基于消息传递方法一起应用了接触处理,该机器人喜欢受试者的帖子。我们发现,最有效的治疗方法是起搏和领导与接触的结合。最不有效的治疗方法是与接触争论。实际上,与对照组相比,与接触始终如一地表现出适时效应。这些发现有许多局限性,但它们仍然对在线社交网络中的政治两极分化,反火效应和说服力的研究具有重要意义。

Online social networks create echo-chambers where people are infrequently exposed to opposing opinions. Even if such exposure occurs, the persuasive effect may be minimal or nonexistent. Recent studies have shown that exposure to opposing opinions causes a backfire effect, where people become more steadfast in their original beliefs. We conducted a longitudinal field experiment on Twitter to test methods that mitigate the backfire effect while exposing people to opposing opinions. Our subjects were Twitter users with anti-immigration sentiment. The backfire effect was defined as an increase in the usage frequency of extreme anti-immigration language in the subjects' posts. We used automated Twitter accounts, or bots, to apply different treatments to the subjects. One bot posted only pro-immigration content, which we refer to as arguing. Another bot initially posted anti-immigration content, then gradually posted more pro-immigration content, which we refer to as pacing and leading. We also applied a contact treatment in conjunction with the messaging based methods, where the bots liked the subjects' posts. We found that the most effective treatment was a combination of pacing and leading with contact. The least effective treatment was arguing with contact. In fact, arguing with contact consistently showed a backfire effect relative to a control group. These findings have many limitations, but they still have important implications for the study of political polarization, the backfire effect, and persuasion in online social networks.

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