Estimating Time-Series Changes in Social Sensitivity for COVID-19 @ Twitter in Japan

R. Saito, S. Haruyama
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Abstract

The global outbreak of COVID-19 is now putting enormous pressure on society to change our traditional social behavior. Government officials are also forced to make short-term decisions based on limited information for public health, and investor sentiment about the infection situation in each country has a significant impact on the stock market. In this paper, we attempt to visualize the time series of indexed social sentiment in Japan under the COVID-19 pandemic by using a neural network approach, and clarify changes in the sensitivity of citizens to the coronavirus. The sentiment was classified for Twitter tweets that matched the keywords for which the government was asked to restrict action, and sentiment trends were identified for the period from before the outbreak to the fifth wave of infection in Tokyo, Sapporo, Osaka, and Fukuoka. The indices obtained show a correlation with the number of infected cases by region and with national and local events, and in global cities such as Tokyo and Osaka as they experienced waves of infections and emergency declarations, sensitivity gradually became paralyzed, and parallel trends in sentiment waveforms were observed among regions. © 2022, Japanese Society for Artificial Intelligence.
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估计日本对COVID-19 @ Twitter的社会敏感性的时间序列变化
新冠肺炎的全球爆发给社会带来了巨大压力,要求改变我们的传统社会行为。政府官员还被迫根据有限的公共卫生信息做出短期决定,投资者对每个国家感染情况的情绪对股市都有重大影响。在本文中,我们试图通过使用神经网络方法可视化新冠肺炎大流行下日本社会情绪指数的时间序列,并阐明公民对冠状病毒敏感性的变化。对推特推文中与政府被要求限制行动的关键词相匹配的情绪进行了分类,并确定了从疫情爆发前到东京、札幌、大阪和福冈第五波感染期间的情绪趋势。所获得的指数显示,各地区的感染病例数以及国家和地方事件之间存在相关性,在东京和大阪等全球城市,随着感染浪潮和紧急状态宣言的爆发,敏感性逐渐减弱,各地区之间的情绪波形呈平行趋势。©2022,日本人工智能学会。
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来源期刊
Transactions of The Japanese Society for Artificial Intelligence
Transactions of The Japanese Society for Artificial Intelligence Computer Science-Artificial Intelligence
CiteScore
0.40
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0.00%
发文量
36
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