印尼公众对新冠肺炎疫情的情绪分析与话题建模

Muhammad Habibi, A. Priadana, Muhammad Rifqi Ma’arif
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引用次数: 6

摘要

世界卫生组织(世界卫生组织)宣布,截至2020年6月1日,新冠肺炎疫情已导致全球确诊病例超过600万例,死亡病例超过37.1万例。这一事件引发了大量科学研究,以帮助社会在医学领域内外应对病毒。关于新冠肺炎在社交媒体上传播的公共卫生分析和公共对话的研究是世界研究人员的重点之一。人们可以分析来自社交媒体的信息,作为有关公共卫生的支持数据。分析公众对话将有助于相关当局了解民意以及他们与公众之间的信息差距,帮助他们制定适当的应急策略,以解决疫情期间社区中存在的问题,并提供不同背景下民众情绪的信息。然而,迄今为止,与公共卫生和公共对话分析相关的研究仅通过对文本数据的监督分析进行。在本研究中,我们旨在使用NLP技术具体分析印尼公众在推特上关于新冠肺炎的对话的情感和主题建模。我们应用一些方法对情绪进行分析,以获得最佳的分类方法。在本研究中,主题建模是使用潜在狄利克雷分配(LDA)在无监督的情况下进行的。这项研究的结果表明,与新冠肺炎大流行相关的最常讨论的话题是经济问题。
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Sentiment Analysis and Topic Modeling of Indonesian Public Conversation about COVID-19 Epidemics on Twitter
The World Health Organization (WHO) declared the COVID-19 outbreak has resulted in more than six million confirmed cases and more than 371,000 deaths globally on June 1, 2020. The incident sparked a flood of scientific research to help society deal with the virus, both inside and outside the medical domain. Research related to public health analysis and public conversations about the spread of COVID-19 on social media is one of the highlights of researchers in the world. People can analyze information from social media as supporting data about public health. Analyzing public conversations will help the relevant authorities understand public opinion and information gaps between them and the public, helping them develop appropriate emergency response strategies to address existing problems in the community during the pandemic and provide information on the population's emotions in different contexts. However, research related to the analysis of public health and public conversations was so far conducted only through supervised analysis of textual data. In this study, we aim to analyze specifically the sentiment and topic modeling of Indonesian public conversations about the COVID-19 on Twitter using the NLP technique. We applied some methods to analyze the sentiment to obtain the best classification method. In this study, the topic modeling was carried out unsupervised using Latent Dirichlet Allocation (LDA). The results of this study reveal that the most frequently discussed topic related to the COVID-19 pandemic is economic issues.
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审稿时长
8 weeks
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