解读微博情绪动态:推特公众对 COVID-19 案例和死亡的态度分析

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-12-07 DOI:10.3390/informatics10040088
Paraskevas Koukaras, Dimitrios Rousidis, Christos Tjortjis
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引用次数: 0

摘要

微博数据中情感极性的识别与分析越来越受到关注。研究人员和从业者试图通过评估公众对全球事件的反应来提取知识。该研究旨在通过对210多万条英文推文进行情绪分析,评估公众对COVID-19传播的态度。其影响包括产生及时的疾病爆发预测和关于全球事件的断言的见解,这可以帮助决策者采取适当的行动。我们调查了公众情绪与COVID-19病例和死亡人数之间是否存在相关性。研究设计综合了文本预处理(正则表达式运算、(去)标记化、停词)、TextBlob情感极化分析、假设制定(零假设检验)和统计分析(Pearson系数和p值)来产生结果。主要发现强调了情绪极性与死亡之间的相关性,从统计前41天开始,扩展到统计后3天。时隔4天,因新冠肺炎死亡人数增加,推特用户的反应是情绪两极分化逐渐消失。我们还发现,COVID-19推特上的对话极性与报告的病例之间存在很强的相关性,而极性与报告的死亡之间存在弱相关性。
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Unraveling Microblog Sentiment Dynamics: A Twitter Public Attitudes Analysis towards COVID-19 Cases and Deaths
The identification and analysis of sentiment polarity in microblog data has drawn increased attention. Researchers and practitioners attempt to extract knowledge by evaluating public sentiment in response to global events. This study aimed to evaluate public attitudes towards the spread of COVID-19 by performing sentiment analysis on over 2.1 million tweets in English. The implications included the generation of insights for timely disease outbreak prediction and assertions regarding worldwide events, which can help policymakers take suitable actions. We investigated whether there was a correlation between public sentiment and the number of cases and deaths attributed to COVID-19. The research design integrated text preprocessing (regular expression operations, (de)tokenization, stopwords), sentiment polarization analysis via TextBlob, hypothesis formulation (null hypothesis testing), and statistical analysis (Pearson coefficient and p-value) to produce the results. The key findings highlight a correlation between sentiment polarity and deaths, starting at 41 days before and expanding up to 3 days after counting. Twitter users reacted to increased numbers of COVID-19-related deaths after four days by posting tweets with fading sentiment polarization. We also detected a strong correlation between COVID-19 Twitter conversation polarity and reported cases and a weak correlation between polarity and reported deaths.
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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