A computational linguistic analysis of the anatomy of production, consumption, and diffusion of misinformation and authentic information in social media: The case of the COVID-19 pandemic

Yuzhang Han, Minoo Modaresnezhad, Indika Dissanayake, Nikhil Mehta, Hamid Nemati
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Abstract

Social media has become a powerful conduit for misinformation during major public events. As a result, an extant body of research has emerged on misinformation and its diffusion. However, the research is fragmented and has mainly focused on understanding the content of misinformation messages. Little attention is paid to the production and consumption of misinformation. This study presents the results of a detailed comparative analysis of the production, consumption, and diffusion of misinformation with authentic information. Our findings, based on extensive use of computational linguistic analyses of COVID-19 pandemic-related messages on the Twitter platform, revealed that misinformation and authentic information exhibit very different characteristics in terms of their contents, production, diffusion, and their ultimate consumption. To support our study, we carefully selected a sample of 500 widely propagated messages confirmed by fact-checking websites as misinformation or authentic information about pandemic-related topics from the Twitter platform. Detailed computational linguistic analyses were performed on these messages and their replies ( N = 198,750). Additionally, we analyzed approximately 1.2 million Twitter user accounts responsible for producing, forwarding, or replying to these messages. Our extensive and detailed findings were used to develop and propose a theoretical framework for understanding the diffusion of misinformation on social media. Our study offers insights for social media platforms, researchers, policymakers, and online information consumers about how misinformation spreads over social media platforms.
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对社交媒体中错误信息和真实信息的生产、消费和传播过程进行计算语言学分析:COVID-19 大流行的案例
在重大公共事件中,社交媒体已成为误导信息的强大传播渠道。因此,关于误导信息及其传播的研究成果层出不穷。然而,这些研究是零散的,主要集中于了解误导信息的内容。人们很少关注误导信息的生产和消费。本研究介绍了对错误信息与真实信息的生产、消费和传播进行详细比较分析的结果。我们对推特平台上与 COVID-19 大流行相关的信息进行了广泛的计算语言学分析,分析结果表明,错误信息和真实信息在内容、生产、传播和最终消费方面表现出截然不同的特征。为了支持我们的研究,我们从推特平台上精心挑选了 500 条广泛传播的信息样本,这些信息经事实核查网站确认为与大流行病相关主题的错误信息或真实信息。我们对这些信息及其回复(N = 198,750 条)进行了详细的计算语言分析。此外,我们还分析了约 120 万个负责制作、转发或回复这些信息的 Twitter 用户账户。我们广泛而详细的研究结果被用来开发和提出一个理论框架,以理解社交媒体上错误信息的传播。我们的研究为社交媒体平台、研究人员、政策制定者和网络信息消费者提供了有关错误信息如何在社交媒体平台上传播的见解。
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