Abstract

Empirical studies show that epidemiological models based on an epidemic’s initial spread rate often fail to predict the true scale of that epidemic. Most epidemics with a rapid early rise die out before affecting a significant fraction of the population, whereas the early pace of some pandemics is rather modest. Recent models suggest that this could be due to the heterogeneity of the target population’s susceptibility. We study a computer malware ecosystem exhibiting spread mechanisms resembling those of biological systems while offering details unavailable for human epidemics. Rather than comparing models, we directly estimate reach from a new and vastly more complete data from a parallel domain, that offers superior details and insight as concerns biological outbreaks. We find a highly heterogeneous distribution of computer susceptibilities, with nearly all outbreaks initially over-affecting the tail of the distribution, then collapsing quickly once this tail is depleted. This mechanism restricts the correlation between an epidemic’s initial growth rate and its total reach, thus preventing the majority of epidemics, including initially fast-growing outbreaks, from reaching a macroscopic fraction of the population. The few pervasive malwares distinguish themselves early on via the following key trait: they avoid infecting the tail, while preferentially targeting computers unaffected by typical malware.

Highlights

  • Empirical studies show that epidemiological models based on an epidemic’s initial spread rate often fail to predict the true scale of that epidemic

  • Considering the vast number of known outbreaks in recent history, the ability to reliably predict which of them will evolve into a large-scale pandemic is essential for the deployment of efficient containment p­ olicies[1], limiting the epidemic’s impact on the population and healthcare systems

  • A few of the approximately 3000 local biological virus outbreaks in human populations reported by the WHO in the past 25 ­years[2] had evolved into global pandemics

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Summary

Introduction

Empirical studies show that epidemiological models based on an epidemic’s initial spread rate often fail to predict the true scale of that epidemic. Such outbreaks cannot reach their expected spread numbers (as predicted by their rapid initial growth rate), since the few outliers (the exceptionally susceptible) are quickly removed from the population.

Results
Conclusion

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