The Networked Context of COVID-19 Misinformation: Informational Homogeneity on YouTube at the Beginning of the Pandemic

Q1 Social Sciences
Daniel Röchert , Gautam Kishore Shahi , German Neubaum , Björn Ross , Stefan Stieglitz
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引用次数: 11

Abstract

During the coronavirus disease 2019 (COVID-19) pandemic, the video-sharing platform YouTube has been serving as an essential instrument to widely distribute news related to the global public health crisis and to allow users to discuss the news with each other in the comment sections. Along with these enhanced opportunities of technology-based communication, there is an overabundance of information and, in many cases, misinformation about current events. In times of a pandemic, the spread of misinformation can have direct detrimental effects, potentially influencing citizens' behavioral decisions (e.g., to not socially distance) and putting collective health at risk. Misinformation could be especially harmful if it is distributed in isolated news cocoons that homogeneously provide misinformation in the absence of corrections or mere accurate information. The present study analyzes data gathered at the beginning of the pandemic (January–March 2020) and focuses on the network structure of YouTube videos and their comments to understand the level of informational homogeneity associated with misinformation on COVID-19 and its evolution over time. This study combined machine learning and network analytic approaches. Results indicate that nodes (either individual users or channels) that spread misinformation were usually integrated in heterogeneous discussion networks, predominantly involving content other than misinformation. This pattern remained stable over time. Findings are discussed in light of the COVID-19 “infodemic” and the fragmentation of information networks.

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COVID-19错误信息的网络背景:大流行开始时YouTube上的信息同质性
在2019冠状病毒病(COVID-19)大流行期间,视频分享平台YouTube一直是广泛传播全球公共卫生危机相关新闻并允许用户在评论区相互讨论新闻的重要工具。随着这些以技术为基础的交流机会的增加,有过多的信息,在许多情况下,关于当前事件的错误信息。在大流行期间,错误信息的传播可能产生直接的有害影响,可能影响公民的行为决定(例如,不保持社交距离),并使集体健康面临风险。如果错误信息在孤立的新闻茧中传播,在没有更正或只有准确信息的情况下千篇一律地提供错误信息,那么错误信息可能特别有害。本研究分析了大流行开始时(2020年1月至3月)收集的数据,并重点关注YouTube视频及其评论的网络结构,以了解与COVID-19错误信息相关的信息同质性水平及其随时间的演变。本研究结合了机器学习和网络分析方法。结果表明,传播错误信息的节点(个人用户或渠道)通常集成在异构讨论网络中,主要涉及错误信息以外的内容。这种模式随着时间的推移保持稳定。根据2019冠状病毒病“信息大流行”和信息网络碎片化的情况讨论了调查结果。
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来源期刊
Online Social Networks and Media
Online Social Networks and Media Social Sciences-Communication
CiteScore
10.60
自引率
0.00%
发文量
32
审稿时长
44 days
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