The recent outbreak of the COVID-19 led to the death of millions of people worldwide. To stave off the spread of the virus, the authorities in the US employed different strategies, including the mask mandate order issued by the states' governors. In the current work, we defined a parameter called the average death ratio as the monthly average of the number of daily deaths to the monthly average number of daily cases. We utilized survey data to quantify people's abidance by the mask mandate order. Additionally, we implicitly addressed the extent to which people abide by the mask mandate order that may depend on some parameters like population, income, and education level. Using different machine learning classification algorithms, we investigated how the decrease or increase in death ratio for the counties in the US West Coast correlates with the input parameters. The results showed that for most counties there, the mask mandate order decreased the death ratio reflecting the effectiveness of this preventive measure on the West Coast. Additionally, the changes in the death ratio demonstrated a noticeable correlation with the socio-economic condition of each county. Moreover, the results showed a promising classification accuracy score as high as around 90%.
翻译:最近COVID-19的爆发导致全世界数百万人死亡。为了阻止病毒的传播,美国当局采用了不同的战略,包括各州州长发布的面具授权令。在目前的工作中,我们把一个称为平均死亡率的参数定义为月平均每日死亡人数与月平均每日病例数的平均数;我们利用调查数据来量化人们受面具授权令的影响。此外,我们隐含地讨论了人们遵守可能取决于人口、收入和教育水平等某些参数的面具授权令的程度。我们利用不同的机器学习分类算法调查了美国西海岸各州死亡率的下降或上升如何与输入参数相关。结果显示,对大多数州来说,面具授权令降低了反映这一预防措施在西海岸的效力的死亡率。此外,死亡率的变化表明与每个县的社会经济条件明显相关。此外,结果显示,有希望的分类准确率达到大约90%。