新冠病毒爆发期间的推特情绪分析

Cihan Çilgin, Metin Baş, Hande Bi̇lgehan, Ceyda Ünal
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引用次数: 7

摘要

从那时起,受欧洲影响的新冠肺炎疫情继续迅速蔓延,特别是在美洲大陆。从目前的数据来看,这种病毒已经影响了大约2.5亿人,并导致500多万人死亡。特别是随着疫情在欧洲大陆的迅速蔓延,这一问题开始在社交媒体上讨论。特别是,Twitter是这个工作空间中最常用的微博客。在本研究中,旨在使用VADER情绪分析方法对全球COVID-19爆发期间许多人,组织和政府机构通过Twitter分享的推文进行情绪分析。#Covid -19、#Covid、#pandemic、#社交距离、#社交距离、#Covid -19、#冠状病毒、#冠状病毒、#中国病毒、#中国病毒在这项研究中被使用。使用这些标签,在2020年1月1日至2020年7月1日期间,Twitter上总共收集了60,243,040条推文。在本研究中,我们使用VADER对与Covid-19相关的Twitter数据中表达的情绪进行分类,并将所得推文的复合分数分为五类:高度积极,积极,中性,消极,高度消极。此外,在研究中,使用Wordcloud将每月最频繁收集的文本数据可视化,并对推文应用N-grams,以便更好地理解推文的内容。当对研究结果进行检查时,在发布的不同时期分享的关于Covid-19的推文反映了不同的情感状况。
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Twitter Sentiment Analysis During Covid-19 Outbreak with VADER
The Covid-19 outbreak, which has been under the influence of Europe since then, continues to spread rapidly especially in the American continent. Looking at the current data, the virus has affected about 250 million people and has killed more than five million people. Especially with the rapid spread of the outbreak in the European continent, this issue started to be discussed in social media. In particular, Twitter is the most frequently used micro-blogging in this workspace. In this study, it is aimed to analyze the tweets shared by many people, organizations and government agencies through Twitter during the global COVID-19 outbreak with sentiment analysis using the VADER Sentiment Analysis method. The hashtags #covid19, #Covid, #pandemic, #social-distancing, #socialdistance, #covid-19, #corona-virius, #coronavirus, #Chinesevirus, #Chinese-virus were used in this study. With these hashtags, a total of 60,243,040 tweets were collected from Twitter between January 1, 2020 and July 1, 2020. In this study, we use the VADER to classify the sentiments expressed in Twitter data related to Covid-19 and the compound scores of the resulting tweets were divided into five categories: Highly Positive, Positive, Neutral, Negative, Highly Negative. In addition, in the study, the Wordcloud was used to visualize the most frequently collected text data monthly, and N-grams were applied to the tweets to better understand the content of the tweets. When the results obtained in the study are examined, the tweets shared about Covid-19 in different periods of the release reflect different sentimental situations.
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