基于更新可靠性和个体怀疑的假新闻传播模型

Kento Yoshikawa, Takumi Awa, Risa Kusano, Hiroyuki Sato, Masatsugu Ichino, H. Yoshiura
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引用次数: 4

摘要

随着社交媒体的广泛使用,假新闻已经成为一个日益严重的问题。针对假新闻的代表性对策是假新闻检测和自动事实核查。然而,这些对策是不够的,因为使用社交媒体的人往往会忽略与他们目前的信念相矛盾的事实。因此,制定有效的对策需要了解假新闻传播的本质。先前已经提出了与这一目标相关的模型,用于描述和分析人们之间的意见传播。然而,这些模型是不充分的,因为它们是基于忽略了假的存在的假设。也就是说,他们假设人们对朋友的信任是平等的,毫无怀疑,人们之间的可靠性是不变的。在本文中,我们提出了一个模型,可以更好地描述假新闻存在下的意见传播。在我们的模型中,每个人更新他或她的朋友的可靠性和怀疑,并在彼此之间交换意见。将提出的模型应用于人工和真实的社交网络,我们发现了三条线索来分析假新闻传播的本质:1)人们对假新闻是假的感知不如对真实新闻是真实的感知准确。2)人们感知假新闻是假的比感知真实新闻是真的要花更多的时间。3)关于假新闻的发现1和2的结果是因为人们在假新闻面前变得怀疑朋友,因此人们不经常更新观点。
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A Fake News Dissemination Model Based on Updating Reliability and Doubt among Individuals
As social media has become more widely used, fake news has become an increasingly serious problem. The representative countermeasures against fake news are fake news detection and automated fact-checking. However, these countermeasures are not sufficient because people using social media tend to ignore facts that contradict their current beliefs. Therefore, developing effective countermeasures requires understanding the nature of fake news dissemination. Previous models related to this aim have been proposed for describing and analyzing opinion dissemination among people. However, these models are not adequate because they are based on the assumptions that ignore the presence of fake. That is, they assume that people believe their friends equally without doubting and that reliability among people does not change. In this paper, we propose a model that can better describe the opinion dissemination in the presence of fake news. In our model, each person updates the reliability of and doubt about his or her friends and exchanges opinions among each other. Applying the proposed model to artificial and real-world social networks, we found three clues to analyze the nature of fake news dissemination: 1) people can less accurately perceive that fake news is fake than they can perceive that real news is real. 2) it takes much more time for people to perceive fake news to be fake than to perceive real news to be real. 3) the results of findings 1 and 2 concerning fake news are because people become skeptical about friends in the presence of fake news and therefore people do not update opinions much.
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