Leveraging artificial intelligence to analyze the COVID-19 distribution pattern based on socio-economic determinants

•We have proposed a self-contained model to study the link between the number of confirmed Covid cases and demographic information.•We have proposed a data-driven approach to identify demographic characteristics and spatial patterns. The associated pattern of interest has been studied at EDs in Dubl...

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Veröffentlicht in:Sustainable cities and society 2021-06, Vol.69, p.102848-102848, Article 102848
Hauptverfasser: Ghahramani, Mohammadhossein, Pilla, Francesco
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Sprache:eng
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Zusammenfassung:•We have proposed a self-contained model to study the link between the number of confirmed Covid cases and demographic information.•We have proposed a data-driven approach to identify demographic characteristics and spatial patterns. The associated pattern of interest has been studied at EDs in Dublin, Ireland.•This work focuses on the application of AI-based approaches to explore the underlying association between socioeconomic characteristics and the number of confirmed COVID cases. To do so, a topology-preserving model is implemented to explore the non-linear relationship among electoral divisions (EDs). The spatialization of socioeconomic data can be used and integrated with other sources of information to reveal valuable insights. Such data can be utilized to infer different variations, such as the dynamics of city dwellers and their spatial and temporal variability. This work focuses on such applications to explore the underlying association between socioeconomic characteristics of different geographical regions in Dublin, Ireland, and the number of confirmed COVID cases in each area. Our aim is to implement a machine learning approach to identify demographic characteristics and spatial patterns. Spatial analysis was used to describe the pattern of interest in electoral divisions (ED), which are the legally defined administrative areas in the Republic of Ireland for which population statistics are published from the census data. We used the most informative variables of the census data to model the number of infected people in different regions at ED level. Seven clusters detected by implementing an unsupervised neural network method. The distribution of people who have contracted the virus was studied.
ISSN:2210-6707
2210-6715
2210-6715
DOI:10.1016/j.scs.2021.102848