发现新冠病毒和选举时代的社交媒体话题和模式

M. Hashemi
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引用次数: 3

摘要

本研究旨在了解政治与流行病在塑造2020年美国总统大选期间人们推文的特征和主题方面的关系。此外,还可以检测错误信息和极端主义,不仅可以帮助在线社交网络(OSN)更快地针对这些内容,还可以提供一个接近实时的趋势话题、错误信息和极端主义在OSN上流动的情况。这可以帮助当局识别他们背后的意图,并找出他们应该如何以及何时处理这些内容。设计/方法/方法本研究侧重于在冠状病毒大流行和美国2020年总统大选的交叉点从大规模OSN数据中提取和验证知识。更具体地说,本研究进行了人工、统计和自动推断,并从与上述两个重大事件相关的100多万条tweet中提取知识。另一方面,由于新冠肺炎大流行和总统选举的巧合,虚假信息操作在2020年加剧。本研究将机器学习应用于检测OSN的错误信息和极端观点。从2020年4月初到2021年1月底,我们的服务器实时收集了超过100万条推文,使用了6个关键词,分别是Covid, Corona, Trump, Biden, Democrats和Republicans。这些推文会根据主题、观点、新闻、政治派别以及错误信息和极端主义进行检查。分析显示,这些推文中的大多数涉及死亡人数、检测、口罩、药物、疫苗和旅行禁令。这些推文中的第二个关注点是重新开放经济和学校、失业和刺激法案。第三个担忧与冠状病毒大流行对政治、投票和错误信息的影响有关。这凸显了这段时间美国选民在Twitter上最关心的话题,以及政客和新闻媒体报道或讨论的众多其他话题。使用长短期记忆网络对这些推文进行自动分类显示,包含错误信息的推文每月形成0.5%至1.1%的与冠状病毒相关的推文,包含极端观点的推文每月形成0.5%至3.1%的推文,其选择时间是2020年10月,恰逢美国总统大选月份。独创性/价值本研究的独创性在于建立了一个框架来收集、处理和分类OSN数据,以发现错误信息和极端主义,并提供一个接近实时的趋势话题、错误信息和极端主义在OSN上流动的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering social media topics and patterns in the coronavirus and election era
Purpose This study aims to understand the relationship between politics and pandemics in shaping the characteristics and themes of people’s Tweets during the US 2020 presidential election. Additionally, the purpose is to detect misinformation and extremism, not only to help online social networks (OSN) to target such content more rapidly but also to provide a close to real-time picture of trending topics, misinformation, and extremism flowing on OSN. This could help authorities to identify the intents behind them and find out how and when they should address such content. Design/methodology/approach This study focuses on extracting and verifying knowledge from large-scale OSN data, at the intersection of the Coronavirus pandemic and the US 2020 presidential election. More specifically, this study makes manual, statistical and automatic inferences and extracts knowledge from over a million Tweets related to the two aforementioned major events. On the other hand, disinformation operations intensified in 2020 with the coincidence of the Coronavirus pandemic and presidential election. This study applies machine learning to detect misinformation and extreme opinions on OSN. Over one million Tweets have been collected by our server in real-time from the beginning of April 2020 to the end of January 2021, using six keywords, namely, Covid, Corona, Trump, Biden, Democrats and Republicans. These Tweets are inspected with regard to their topics, opinions, news, and political affiliation, along with misinformation and extremism. Findings Our analyses showed that the majority of these Tweets concern death tolls, testing, mask, drugs, vaccine, and travel bans. The second concern among these Tweets is reopening the economy and schools, unemployment, and stimulus bills. The third concern is related to the Coronavirus pandemic’s impacts on politics, voting, and misinformation. This highlights the topics that US voters on Twitter were most concerned about during this time period, among the multitude of other topics that politicians and news media were reporting or discussing. Automatic classification of these Tweets using a long short-term memory network revealed that Tweets containing misinformation formed between 0.5% and 1.1% of Coronavirus-related Tweets every month and Tweets containing extreme opinions formed between 0.5% and 3.1% of them every month, with its pick in October 2020, coinciding with the US presidential election month. Originality/value The originality of this study lies in establishing a framework to collect, process, and classify OSN data to detect misinformation and extremism and to provide a close to real-time picture of trending topics, misinformation, and extremism flowing on OSN.
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