Social Media and the COVID-19: South African and Zimbabwean Netizens’ Response to a Pandemic

M. Mutanga, Oswelled Ureke, Tarirai Chani
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引用次数: 2

Abstract

Since the end of 2019, the world faced a major health crisis in the form of the Coronavirus (COVID-19) pandemic. To mitigate the impact of the pandemic, governments across the globe instituted measures such as restricting local and international travel and in many cases, ordering citizens to stay indoors. Considering the social and economic impact of these restrictions it becomes crucial to investigate internet citizens’ (netizens) perception about the precautionary measures adopted. The study is anchored in the digital public sphere theory, which treats social media applications as virtual platforms where netizens commune to share ideas and debate about issues that affect them. Social media platforms already have critical public views on the current pandemic. However, the majority of this data is unstructured and difficult to interpret. Natural language processing (NLP), on the other hand, makes the task of gathering and analysing vast amounts of textual data feasible. Extracting structured knowledge from natural language, however, comes with unique challenges due to diverse linguistic properties including abbreviation, spelling mistakes, punctuations, stop words and non-standard text. In this work, The Latent Dirichlet Allocation (LDA) algorithm was applied to tweeter data to extract topics discussed by netzens from Zimbabwe and South Africa.  The primary focus of this paper, is to comparatively explore the variety of topics that occupied twitter communities from the two countries. We examine whether or not the national identities that define and differentiate citizens of these countries also exist on Twitter as evident in the emerging topics. Furthermore, this work investigated public opinion by analysing how citizens discuss the issues around the COVID-19 pandemic on social media
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社交媒体与COVID-19:南非和津巴布韦网民对大流行的反应
自2019年底以来,世界面临着冠状病毒(COVID-19)大流行形式的重大卫生危机。为了减轻疫情的影响,全球各国政府都采取了限制本地和国际旅行等措施,在许多情况下,还命令公民留在室内。考虑到这些限制的社会和经济影响,调查网民对所采取的预防措施的看法变得至关重要。该研究以数字公共领域理论为基础,该理论将社交媒体应用视为虚拟平台,网民可以在其中交流想法并就影响他们的问题进行辩论。社交媒体平台已经对当前的大流行发表了批评的公众观点。然而,这些数据大部分是非结构化的,难以解释。另一方面,自然语言处理(NLP)使得收集和分析大量文本数据的任务变得可行。然而,由于多种语言特性,包括缩写、拼写错误、标点、停止词和非标准文本,从自然语言中提取结构化知识面临着独特的挑战。本研究将Latent Dirichlet Allocation (LDA)算法应用于推特数据,提取津巴布韦和南非网民讨论的话题。本文的主要重点是比较探讨占据两国twitter社区的各种话题。我们研究定义和区分这些国家公民的国家身份是否也存在于Twitter上,这在新兴话题中很明显。此外,这项工作通过分析公民如何在社交媒体上讨论COVID-19大流行的问题来调查公众舆论
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审稿时长
12 weeks
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