Twitter Sentiment Analysis in Covid-19 Pandemic

Samaneh Madanian, David Airehrour, Nabilah Ahmad Samsuri, M. Cherrington
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引用次数: 3

Abstract

We have yet to realise the full capability of social media as an innovative information platform during emergencies and crisis response and management. Sentiment analysis can systematically identify, extract, and scrutinise emotional states and subjective information in social media data. Exploring reactions and perceptions to response messaging is invaluable and proved especially useful for a pandemic response as it can demonstrate general population reaction to the pandemic and governments response actions. This can be further analysed to identify the gap between government response actions and communications and citizens' perceptions. In this paper, an analysis of Twitter data explores population reaction towards COVID-19 health messaging. A Natural Language Processing Python tool is known as TextBlob was used to discover general data sentiment. Data were divided into three sentiments and text extraction of health messages was conducted to explore subsequent tweets in predefined categories. Our findings show the outcome of Tweets analysis could help us to identify the general population concerns and their reactions to COVID-19 to give a better understanding of the situation to governments and support them in implementing appropriate policies.
Covid-19大流行中的推特情绪分析
在突发事件和危机应对和管理中,我们尚未充分发挥社交媒体作为创新信息平台的全部能力。情绪分析可以系统地识别、提取和审查社交媒体数据中的情绪状态和主观信息。探索对应对信息传递的反应和看法是非常宝贵的,事实证明对大流行应对特别有用,因为它可以显示大众对大流行的一般反应和政府的应对行动。这可以进一步分析,以确定政府的应对行动和沟通与公民的看法之间的差距。在本文中,对Twitter数据的分析探讨了人们对COVID-19健康信息的反应。一个被称为TextBlob的自然语言处理Python工具被用于发现一般数据情感。将数据分为三种情绪,并对健康信息进行文本提取,以探索预定义类别的后续推文。我们的研究结果表明,推文分析的结果可以帮助我们确定一般人群的担忧及其对COVID-19的反应,从而更好地了解政府的情况,并支持他们实施适当的政策。
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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