Modelling the Spread of COVID-19 in New York City

Jose Olmo, Marcos Sanso-Navarro
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引用次数: 2

Abstract

This paper proposes a methodology to predict the increase in the number of confirmed COVID-19 cases in the city of New York at the zip code level. We concentrate on the initial period of the pandemic spanning from March 31 to June 16, 2020. To do this, we propose a Poisson regression model for count data that includes a large set of covariates reflecting socioeconomic conditions at neighbourhood level and spatial effects. The sensitivity of the predictions of the number of cases to the specific choice of the regressors is controlled for by also considering an emsemble prediction model given by Bayesian model averaging. Our results extend related studies by showing that variables such as population size, its share of the elderly, the self-employment rate, income per capita, and the percentage of workers in the educational and healthcare sectors not only explain the cross-sectional variability in the number of new confirmed cases but also have out-of-sample predictive ability. Our pointwise forecasts display reasonable mean square prediction errors and the associated interval forecasts accurate empirical coverage probabilities suggesting the suitability of the methodology for prediction of the number of infections.
模拟COVID-19在纽约市的传播
本文提出了一种以邮政编码为单位预测纽约市新冠肺炎确诊病例增长的方法。我们重点关注2020年3月31日至6月16日这一大流行的初期。为了做到这一点,我们提出了一个计数数据的泊松回归模型,其中包括反映邻里水平和空间效应的社会经济条件的大量协变量。通过考虑贝叶斯模型平均给出的集成预测模型,控制了病例数预测对回归量具体选择的敏感性。我们的研究结果扩展了相关研究,表明诸如人口规模、老年人比例、自雇率、人均收入以及教育和医疗保健部门的工人百分比等变量不仅解释了新确诊病例数量的横截面变异性,而且具有样本外预测能力。我们的点式预测显示出合理的均方预测误差,相关区间预测准确的经验覆盖概率,表明该方法用于预测感染数量的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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