论文标题

通过基于社交媒体的互动,数据驱动的代理级别风险和响应沟通的推断

Data-driven Inferences of Agency-level Risk and Response Communication on COVID-19 through Social Media based Interactions

论文作者

Ahmed, Md Ashraf, Sadri, Arif Mohaimin, Amini, M. Hadi

论文摘要

通过社交媒体对公共机构进行的风险和反应沟通在新型冠状病毒(Covid-19)的出现和传播中发挥了重要作用,并且在其他信息渠道中呼应了这种互动。这项研究收集了时间敏感的在线社交媒体数据,并使用数据驱动的方法分析了公共卫生(WHO,CDC),紧急情况(FEMA)和运输(FDOT)机构的这种沟通模式。这项工作的范围包括对机构在大流行期间通过社交媒体传达风险信息的详细了解(即锁定时间,重新开放的时间)和疾病爆发指标(即确认案件的数量,死亡人数)。数据包括来自不同机构的Twitter互动(平均每个代理机构)和众包数据(即世界表)在COVID-19案件和死亡中观察到了2月21日,2020年6月6日至2020年6月6日。几种机器学习技术,例如(即主题挖掘和日子)等级时,请在此期间适用于此期间的工作时间。结果的时间信息图表随着时间的流逝而捕获了代理级别的变化,以散布有关面部覆盖,家庭隔离,社交距离和接触跟踪的重要性的信息。此外,机构在讨论社区传播,缺乏个人防护设备,测试和医疗用品,使用烟草,疫苗,心理健康问题,住院,飓风季节,机场,建筑工程等方面表现出差异。随着社区转移到新的正常情况以及将来的大流行时,发现可以支持更有效的风险和响应信息转移。

Risk and response communication of public agencies through social media played a significant role in the emergence and spread of novel Coronavirus (COVID-19) and such interactions were echoed in other information outlets. This study collected time-sensitive online social media data and analyzed such communication patterns from public health (WHO, CDC), emergency (FEMA), and transportation (FDOT) agencies using data-driven methods. The scope of the work includes a detailed understanding of how agencies communicate risk information through social media during a pandemic and influence community response (i.e. timing of lockdown, timing of reopening) and disease outbreak indicators (i.e. number of confirmed cases, number of deaths). The data includes Twitter interactions from different agencies (2.15K tweets per agency on average) and crowdsourced data (i.e. Worldometer) on COVID-19 cases and deaths were observed between February 21, 2020 and June 06, 2020. Several machine learning techniques such as (i.e. topic mining and sentiment ratings over time) are applied here to identify the dynamics of emergent topics during this unprecedented time. Temporal infographics of the results captured the agency-levels variations over time in circulating information about the importance of face covering, home quarantine, social distancing and contact tracing. In addition, agencies showed differences in their discussions about community transmission, lack of personal protective equipment, testing and medical supplies, use of tobacco, vaccine, mental health issues, hospitalization, hurricane season, airports, construction work among others. Findings could support more efficient transfer of risk and response information as communities shift to new normal as well as in future pandemics.

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