Inter- and Intrastate Network Analysis of COVID-19 Spread Using the Social Connectedness Index

IF 0.7 Q4 GEOSCIENCES, MULTIDISCIPLINARY Journal of Disaster Research Pub Date : 2023-01-20 DOI:10.20965/jdr.2023.p0040
Jing Tang, Napatee Yaibuates, Theerat Tassanai, N. Leelawat
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Abstract

Since 2020, the outbreak of the coronavirus disease 2019 (COVID-19) pandemic has affected the entire world, and networks of human connections were identified as a factor that had potentially impacted the geographical spread of COVID-19. With the help of social media platforms, these networks have connected populations across the word and allowed people to view each other in close virtual proximity. Consequently, the Social Connectedness Index (SCI) is used to measure the strength of social connectivity across geographical regions through friendship ties on Facebook. The importance of social networks—and their relation to human connections—may correlate with the spread of COVID-19. Since these networks can have a potential effect on the spread of COVID-19, it is crucial to identify the factors that were associated with its spread during the pandemic. In order to analyze SCI data, a social network analysis was conducted to define the network parameters and perform calculations using graph theory. A correlation analysis was also performed to identify factors that correlated with the spread of COVID-19 cases using the data in the United States (US). Finally, the machine learning model was used to create a case prediction paradigm from the network parameters. The results showed that SCI can be used as a parameter to create a pandemic prediction model. Multiple linear regression also yielded satisfactory results that predicted the total number of positive cases measured by adjusted R2. In terms of the time frame, this study suggested that the parameters from the previous week can be used to predict the number of weekly infections. The findings showed that social networks had a greater impact on the prediction of current active cases than total positive cases. The social networks between counties within a state also held more importance than those across states.
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使用社会联系指数对新冠肺炎传播的州际和州内网络分析
自2020年以来,2019冠状病毒病(新冠肺炎)大流行的爆发影响了整个世界,人际关系网络被确定为可能影响新冠肺炎地理传播的因素。在社交媒体平台的帮助下,这些网络将世界各地的人口联系起来,并允许人们在虚拟的近距离观看彼此。因此,社交连接指数(SCI)被用来衡量通过Facebook上的友谊关系实现的跨地理区域的社交连接强度。社交网络的重要性及其与人际关系的关系可能与新冠肺炎的传播有关。由于这些网络可能对新冠肺炎的传播产生潜在影响,因此确定在大流行期间与其传播相关的因素至关重要。为了分析SCI数据,进行了社交网络分析,以定义网络参数并使用图论进行计算。还利用美国的数据进行了相关性分析,以确定与新冠肺炎病例传播相关的因素。最后,使用机器学习模型根据网络参数创建案例预测范式。结果表明,SCI可以作为一个参数来创建流行病预测模型。多元线性回归也产生了令人满意的结果,预测了通过调整R2测量的阳性病例总数。就时间框架而言,这项研究表明,前一周的参数可以用来预测每周感染人数。研究结果表明,社交网络对当前活跃病例的预测影响大于总阳性病例。州内各县之间的社交网络也比跨州的社交网络更重要。
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来源期刊
Journal of Disaster Research
Journal of Disaster Research GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
1.60
自引率
37.50%
发文量
113
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