Detecting Global Community Structure in a COVID-19 Activity Correlation Network
Hiroki Sayama

TL;DR
This study constructs a correlation network from COVID-19 case data to identify three major global community structures, revealing patterns of pandemic spread and variant impacts across different regions.
Contribution
The paper introduces a novel network-based approach to detect and analyze global community structures in COVID-19 activity data using correlation and modularity maximization.
Findings
Identified three major regional communities with distinct pandemic patterns.
Detected the influence of variants like Delta and Omicron on regional activity.
Created a 3D phase space summarizing global pandemic progression.
Abstract
The global pandemic of COVID-19 over the last 2.5 years have produced an enormous amount of epidemic/public health datasets, which may also be useful for studying the underlying structure of our globally connected world. Here we used the Johns Hopkins University COVID-19 dataset to construct a correlation network of countries/regions and studied its global community structure. Specifically, we selected countries/regions that had at least 100,000 cumulative positive cases from the dataset and generated a 7-day moving average time series of new positive cases reported for each country/region. We then calculated a time series of daily change exponents by taking the day-to-day difference in log of the number of new positive cases. We constructed a correlation network by connecting countries/regions that had positive correlations in their daily change exponent time series using their Pearson…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Mental Health Research Topics · Bioinformatics and Genomic Networks
