推荐系统是否使社交媒体更容易受到错误信息传播者的影响?

Antonela Tommasel, F. Menczer
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引用次数: 5

摘要

推荐系统是在线信息消费和用户决策过程的核心,因为它们帮助用户找到相关信息并建立新的社会关系。然而,推荐也可能(无意中)帮助传播错误信息,并增加传播错误信息的社会影响。在此背景下,我们研究了朋友推荐系统对Twitter上错误信息传播者的社会影响的影响。为此,我们将几个用户推荐应用于COVID-19错误信息数据收集。然后,我们探索了假设场景来模拟用户错误信息传播行为的变化,作为推荐网络中交互的影响。我们的研究表明,推荐确实可以影响错误信息传播者与其他用户的互动方式,并影响他们。
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Do Recommender Systems Make Social Media More Susceptible to Misinformation Spreaders?
Recommender systems are central to online information consumption and user-decision processes, as they help users find relevant information and establish new social relationships. However, recommenders could also (unintendedly) help propagate misinformation and increase the social influence of the spreading it. In this context, we study the impact of friend recommender systems on the social influence of misinformation spreaders on Twitter. To this end, we applied several user recommenders to a COVID-19 misinformation data collection. Then, we explore what-if scenarios to simulate changes in user misinformation spreading behaviour as an effect of the interactions in the recommended network. Our study shows that recommenders can indeed affect how misinformation spreaders interact with other users and influence them.
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