Abstract

The COVID-19 pandemic affected the whole world, but not all countries were impacted equally. This opens the question of what factors can explain the initial faster spread in some countries compared to others. Many such factors are overshadowed by the effect of the countermeasures, so we studied the early phases of the infection when countermeasures had not yet taken place. We collected the most diverse dataset of potentially relevant factors and infection metrics to date for this task. Using it, we show the importance of different factors and factor categories as determined by both statistical methods and machine learning (ML) feature selection (FS) approaches. Factors related to culture (e.g., individualism, openness), development, and travel proved the most important. A more thorough factor analysis was then made using a novel rule discovery algorithm. We also show how interconnected these factors are and caution against relying on ML analysis in isolation. Importantly, we explore potential pitfalls found in the methodology of similar work and demonstrate their impact on COVID-19 data analysis. Our best models using the decision tree classifier can predict the infection class with roughly 80% accuracy.

Highlights

  • Coronavirus disease 2019 (COVID-19) is an infectious disease first identified in December 2019 in Wuhan, China

  • This work aimed to determine if conditions in a given country before any countermeasures are taken were suitable for the fast spread of COVID-19

  • As the ultimate aim of most work dealing with COVID-19 is to investigate what influences the virus’s initial spread, we investigated some predictive models to see how successful such predictions can be

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Summary

Introduction

Coronavirus disease 2019 (COVID-19) is an infectious disease first identified in December 2019 in Wuhan, China. The disease is mild, but a fraction of the population—mostly older people with co-morbidities—experience severe respiratory symptoms, with cardiovascular and other complications. These lead to death in 0.7% of those infected [1], which is about 20 times worse than the seasonal flu. Because of the high mortality rate and infectiousness that is worse than flu [2,3], strong countermeasures were adopted by most countries. The significant impact of COVID-19 on society resulted in substantial public interest Temporary closure of businesses, and the like have led to severe economic activity and social life disruption.

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