论文标题

Twitter和人口普查数据分析,以探索Covid-19的社会经济因素重新开放情绪

Twitter and Census Data Analytics to Explore Socioeconomic Factors for Post-COVID-19 Reopening Sentiment

论文作者

Rahman, Md. Mokhlesur, Ali, G. G. Md. Nawaz, Li, Xue Jun, Paul, Kamal Chandra, Chong, Peter H. J.

论文摘要

研究人员在调查和分类社交媒体用户对项目,情况和系统的观点非常受欢迎。但是,他们很少讨论这种情感的基本社会经济因素协会。这项研究试图探讨与人们在美国联合19日期内的全球危机中(美国)(美国)重新开放经济相关的积极和负面情绪相关的因素。它考虑了情境不确定性(即由于封锁政策而导致的工作和旅行模式的变化),经济衰退和相关的创伤以及抑郁症等情绪因素。为了了解人们对经济重新开放的观点,收集了Twitter数据,代表了包括美国华盛顿特区在内的51个州。人们收集了人们的全州社会经济特征,建立的环境数据以及相关案例的COVID-19的数量,并与Twitter数据集成以执行分析。使用二进制logit模型来确定影响人们对积极或负面情绪的因素。 Logit模型的结果表明,家庭家庭,受教育程度较低的人,劳动力中的人,低收入人士和租金较高的人对重新开放经济更感兴趣。相比之下,成员数量和高收入高的家庭对重新开放经济的兴趣较小。该模型可以正确分类56.18%的观点。 Pearson Chi2测试表明,总体而言,该模型具有较高的拟合度。这项研究为决策者提供了明确的迹象,他们可以在哪里分配资源,以及他们可以采取哪些政策选择来改善人民的社会经济状况,并减轻流浪者在当前情况以及将来的影响。

Investigating and classifying sentiments of social media users towards an item, situation, and system are very popular among the researchers. However, they rarely discuss the underlying socioeconomic factor associations for such sentiments. This study attempts to explore the factors associated with positive and negative sentiments of the people about reopening the economy, in the United States (US) amidst the COVID-19 global crisis. It takes into consideration the situational uncertainties (i.e., changes in work and travel pattern due to lockdown policies), economic downturn and associated trauma, and emotional factors such as depression. To understand the sentiment of the people about the reopening economy, Twitter data was collected, representing the 51 states including Washington DC of the US. State-wide socioeconomic characteristics of the people, built environment data, and the number of COVID-19 related cases were collected and integrated with Twitter data to perform the analysis. A binary logit model was used to identify the factors that influence people toward a positive or negative sentiment. The results from the logit model demonstrate that family households, people with low education levels, people in the labor force, low-income people, and people with higher house rent are more interested in reopening the economy. In contrast, households with a high number of members and high income are less interested to reopen the economy. The model can correctly classify 56.18% of the sentiments. The Pearson chi2 test indicates that overall this model has high goodness-of-fit. This study provides a clear indication to the policymakers where to allocate resources and what policy options they can undertake to improve the socioeconomic situations of the people and mitigate the impacts of pandemics in the current situation and as well as in the future.

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