Statistical and Network-Based Analysis of Italian COVID-19 Data: Communities Detection and Temporal Evolution
Título
Statistical and Network-Based Analysis of Italian COVID-19 Data: Communities Detection and Temporal Evolution
Autor
Mario Cannataro, Marianna Milano
Descripción
The coronavirus disease (COVID-19) outbreak started in Wuhan, China, and it has rapidly spread across the world. Italy is one of the European countries most affected by COVID-19, and it has registered high COVID-19 death rates and the death toll. In this article, we analyzed different Italian COVID-19 data at the regional level for the period 24 February to 29 March 2020. The analysis pipeline includes the following steps. After individuating groups of similar or dissimilar regions with respect to the ten types of available COVID-19 data using statistical test, we built several similarity matrices. Then, we mapped those similarity matrices into networks where nodes represent Italian regions and edges represent similarity relationships (edge length is inversely proportional to similarity). Then, network-based analysis was performed mainly discovering communities of regions that show similar behavior. In particular, network-based analysis was performed by running several community detection algorithms on those networks and by underlying communities of regions that show similar behavior. The network-based analysis of Italian COVID-19 data is able to elegantly show how regions form communities, i.e., how they join and leave them, along time and how community consistency changes along time and with respect to the different available data.
Fecha
2020
Materia
network analysis, community detection, COVID-19
Identificador
DOI: 10.3390/ijerph17124182
Fuente
International Journal of Environmental Research and Public Health
Editor
MDPI AG
Cobertura
Medicine
Colección
Citación
Mario Cannataro, Marianna Milano, “Statistical and Network-Based Analysis of Italian COVID-19 Data: Communities Detection and Temporal Evolution,” SOCICT Open, consulta 29 de octubre de 2025, https://socictopen.socict.org/items/show/3821.
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