As a reaction to the high infectiousness and lethality of the COVID-19 virus, countries around the world have adopted drastic policy measures to contain the pandemic. However, it remains unclear which effect these measures, so-called non-pharmaceutical interventions (NPIs), have on the spread of the virus. In this article, we use machine learning and apply drift detection methods in a novel way to predict the time lag of policy interventions with respect to the development of daily case numbers of COVID-19 across 9 European countries and 28 US states. Our analysis shows that there are, on average, more than two weeks between NPI enactment and a drift in the case numbers.
翻译:作为对COVID-19病毒高传染性和致命性的一种反应,世界各国为遏制这一流行病采取了严厉的政策措施,然而,仍然不清楚这些措施,即所谓的非制药干预对病毒传播的影响。在本条中,我们使用机器学习和采用漂移探测方法,以新的方式预测在9个欧洲国家和28个美国州发展COVID-19每日病例数方面政策干预的时间滞后。我们的分析表明,从颁布NIPI到病例数的移动,平均有两周多的时间。