Estimating time-series changes in social sentiment @Twitter in U.S. metropolises during the COVID-19 pandemic.

IF 2 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS Journal of Computational Social Science Pub Date : 2023-01-01 DOI:10.1007/s42001-022-00186-4
Ryuichi Saito, Shinichiro Haruyama
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引用次数: 1

Abstract

Since early 2020, the global coronavirus pandemic has strained economic activities and traditional lifestyles. For such emergencies, our paper proposes a social sentiment estimation model that changes in response to infection conditions and state government orders. By designing mediation keywords that do not directly evoke coronavirus, it is possible to observe sentiment waveforms that vary as confirmed cases increase or decrease and as behavioral restrictions are ordered or lifted over a long period. The model demonstrates guaranteed performance with transformer-based neural network models and has been validated in New York City, Los Angeles, and Chicago, given that coronavirus infections explode in overcrowded cities. The time-series of the extracted social sentiment reflected the infection conditions of each city during the 2-year period from pre-pandemic to the new normal and shows a concurrency of waveforms common to the three cities. The methods of this paper could be applied not only to analysis of the COVID-19 pandemic but also to analyses of a wide range of emergencies and they could be a policy support tool that complements traditional surveys in the future.

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估算新冠疫情期间美国大城市社会情绪@Twitter的时间序列变化。
自2020年初以来,全球冠状病毒大流行给经济活动和传统生活方式带来了压力。针对此类突发事件,本文提出了一种随感染情况和国家政府命令变化的社会情绪估计模型。通过设计不直接引起冠状病毒的中介关键词,可以观察到随着确诊病例的增加或减少、行为限制的下达或解除而长期变化的情绪波形。该模型利用基于变压器的神经网络模型证明了有保证的性能,并在纽约、洛杉矶和芝加哥得到了验证,因为冠状病毒感染在拥挤的城市中激增。提取的社会情绪时间序列反映了各城市从疫情前到新常态2年期间的感染情况,呈现出3个城市共有的波形并发性。本文的方法不仅可以应用于COVID-19大流行的分析,还可以应用于各种突发事件的分析,它们可以成为未来传统调查的补充政策支持工具。
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来源期刊
Journal of Computational Social Science
Journal of Computational Social Science SOCIAL SCIENCES, MATHEMATICAL METHODS-
CiteScore
6.20
自引率
6.20%
发文量
30
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