Selected article for: "binomial model and population density"

Author: Ahmed, Jishan; Jaman, Md. Hasnat; Saha, Goutam; Ghosh, Pratyya
Title: Effect of environmental and socio-economic factors on the spreading of COVID-19 at 70 cities/provinces
  • Cord-id: 4dsyaga4
  • Document date: 2021_5_5
  • ID: 4dsyaga4
    Snippet: The main goal of this article is to demonstrate the impact of environmental and socio-economic factors on the spreading of COVID-19. In this research, data has been collected from 70 cities/provinces of different countries around the world that are affected by COVID-19. In this research, environmental data such as temperatures, humidity, air quality and population density and socio-economic data such as GDP (PPP) per capita, per capita health expenditure, life expectancy and total test in each o
    Document: The main goal of this article is to demonstrate the impact of environmental and socio-economic factors on the spreading of COVID-19. In this research, data has been collected from 70 cities/provinces of different countries around the world that are affected by COVID-19. In this research, environmental data such as temperatures, humidity, air quality and population density and socio-economic data such as GDP (PPP) per capita, per capita health expenditure, life expectancy and total test in each of these cities/provinces are considered. This data has been analyzed using statistical models such as Poisson and negative binomial models. It is found that a negative binomial regression model is the best fit for our data. Our results reveal higher population density to be an important factor for the quick spread of COVID-19 as maintenance of social distancing requirements are more difficult in urban areas. Moreover, GDP (PPP) and PM(2.5) are linked with fewer cases of COVID-19 whereas PM(10), and total number of tests are strongly associated with the increase of COVID-19 case counts.

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