School of Computer, Data and Mathematical Sciences, Western Sydney University, Parramatta South Campus, Sydney 2116 NSW, Australia.
College of Information Technology, United Arab Emirates University, Al Ain P.O. Box 15551, UAE.
Int J Environ Res Public Health. 2020 Aug 2;17(15):5574. doi: 10.3390/ijerph17155574.
Coronavirus Disease 2019 (COVID-19) has affected day to day life and slowed down the global economy. Most countries are enforcing strict quarantine to control the havoc of this highly contagious disease. Since the outbreak of COVID-19, many data analyses have been done to provide close support to decision-makers. We propose a method comprising data analytics and machine learning classification for evaluating the effectiveness of lockdown regulations. Lockdown regulations should be reviewed on a regular basis by governments, to enable reasonable control over the outbreak. The model aims to measure the efficiency of lockdown procedures for various countries. The model shows a direct correlation between lockdown procedures and the infection rate. Lockdown efficiency is measured by finding a correlation coefficient between lockdown attributes and the infection rate. The lockdown attributes include retail and recreation, grocery and pharmacy, parks, transit stations, workplaces, residential, and schools. Our results show that combining all the independent attributes in our study resulted in a higher correlation (0.68) to the dependent value Interquartile 3 (Q3). Mean Absolute Error (MAE) was found to be the least value when combining all attributes.
2019 年冠状病毒病(COVID-19)影响了人们的日常生活,也减缓了全球经济的发展。大多数国家都在实施严格的隔离措施,以控制这种高传染性疾病的肆虐。自 COVID-19 爆发以来,已经进行了许多数据分析,为决策者提供了密切支持。我们提出了一种包含数据分析和机器学习分类的方法,用于评估封锁措施的效果。政府应定期审查封锁规定,以便对疫情进行合理控制。该模型旨在衡量各国封锁程序的效率。模型显示封锁程序与感染率之间存在直接关联。通过找到封锁属性与感染率之间的相关系数来衡量封锁效率。封锁属性包括零售和娱乐、杂货店和药店、公园、公交站、工作场所、住宅和学校。我们的研究结果表明,将研究中的所有独立属性结合起来,与因变量(第 3 个四分位数(Q3))的相关性更高(0.68)。当结合所有属性时,发现平均绝对误差(MAE)是最小的值。