Attitudes Evaluation Toward COVID-19 Pandemic: An Application of Twitter Sentiment Analysis and Latent Dirichlet Allocation

Saeed Shurrab, Yazan Shannak, Abdulkarem Almshnanah, Huthaifa Khazaleh, Hassan M. Najadat
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引用次数: 1

Abstract

USA is among the countries that have been considerably affected by the COVID-19 to contain the largest proportion of cases globally. This research aims at investigating the American Community opinions polarity toward the outbreak of the virus in the US throughout twitter social media platform. Further, a topic modeling approach was employed to gain insights about the most discussed topic by the US community during pandemic. A total number of 1,385,469 tweets were collected for the purpose of the study over the period of early February to late April. In addition, unsupervised approaches were employed in the analysis including VADER lexicon for sentiment analysis and Latent Dirichlet Allocation (LDA) for topic modelling. The main findings of the research showed that the largest share of the collected tweets is of positive sentiment followed by negative and neutral. Further, temporal sentiment analysis on monthly basis in comparison with COVID-19 cases showed how the tweets polarity changed over time from early February to late April. In total, the polarity of the tweets was negative before the virus outbreak and positive during the outbreak. In addition, LDA analysis showed that the overall discussed topics tend are oriented toward economy, politics, and the spread of the virus outside the US in February while March and April topics are oriented toward discussing the prevention from the virus as well as spread of the virus inside USA.
对COVID-19大流行的态度评估:Twitter情绪分析和潜在狄利克雷分配的应用
美国是受COVID-19严重影响的国家之一,是全球病例比例最大的国家。本研究旨在通过推特社交媒体平台调查美国社区对美国疫情爆发的意见两极。此外,采用主题建模方法来深入了解大流行期间美国社区讨论最多的主题。在2月初至4月底期间,研究共收集了1,385,469条推文。此外,在分析中采用了无监督方法,包括用于情感分析的VADER词典和用于主题建模的Latent Dirichlet Allocation (LDA)。研究的主要发现表明,收集到的推文中,积极情绪所占比例最大,其次是消极和中性情绪。此外,与COVID-19病例相比,以月为基础进行的时间情绪分析显示,从2月初到4月底,推文的极性随时间变化而变化。总的来说,在病毒爆发之前,推文的极性是消极的,而在爆发期间是积极的。另外,根据LDA分析,2月份讨论的话题主要集中在经济、政治、美国以外地区的扩散等方面,而3、4月份讨论的话题主要集中在美国国内的防疫和扩散等方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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