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Developing a socio-computational approach to examine toxicity propagation and regulation in COVID-19 discourse on YouTube

机译:制定社会计算方法,以检查youtube Covid-19话语中的毒性传播和监管

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As the novel coronavirus (COVID-19) continues to ravage the world at an unprecedented rate, formal recommendations from medical experts are becoming muffled by the avalanche of toxic content posted on social media platforms. This high level of toxic content prevents the dissemination of important and time-sensitive information and jeopardizes the sense of community that online social networks (OSNs) seek to cultivate. In this article, we present techniques to analyze toxic content and actors that propagated it on YouTube during the initial months after COVID-19 information was made public. Our dataset consists of 544 channels, 3,488 videos, 453,111 commenters, and 849,689 comments. We applied topic modeling based on Latent Dirichlet Allocation (LDA) to identify dominant topics and evolving trends within the comments on relevant videos. We conducted social network analysis (SNA) to detect influential commenters, and toxicity analysis to measure the health of the network. SNA allows us to identify the top toxic users in the network, which led to the creation of experiments simulating the impact of removal of these users on toxicity in the network. Through this work, we demonstrate not only how to identify toxic content related to COVID-19 on YouTube and the actors who propagated this toxicity, but also how social media companies and policy makers can use this work. This work is novel in that we devised a set of experiments in an attempt to show how if social media platforms eliminate certain toxic users, they can improve the overall health of the network by reducing the overall toxicity level.
机译:由于小巧的冠状病毒(Covid-19)继续以前所未有的速度蹂躏世界,医疗专家的正式建议在社交媒体平台上发布的有毒内容的雪崩。这种高水平的毒性内容阻止了传播重要和时间敏感的信息,并危及在线社交网络(OSNS)寻求培养的社区感。在本文中,我们提出了分析在Covid-19信息的初始几个月内将其传播在YouTube上的有毒内容和演员的技术。我们的数据集由544个频道,3,488个视频,453,111评论者和849,689个评论组成。我们基于潜在Dirichlet分配(LDA)应用主题建模,以确定相关视频评论中的主题主题和不断发展的趋势。我们进行了社交网络分析(SNA)来检测有影响力的评论者,毒性分析来衡量网络的健康。 SNA允许我们识别网络中的顶级有毒用户,这导致了模拟删除这些用户对网络中毒性的影响的实验。通过这项工作,我们不仅展示了如何识别与Covid-19对YouTube和传播这种毒性的演员有关的有毒性内容,还展示了社交媒体公司和政策制定者如何使用这项工作。这项工作是新颖的,我们设计了一套实验,试图展示社交媒体平台如何消除某些有毒用户,他们可以通过降低整体毒性水平来改善网络的整体健康状况。

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