A novel spatio-temporal interpolation algorithm and its application to the COVID-19 pandemic

Junzhe Cai, P. Revesz
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引用次数: 2

Abstract

This paper describes several interpolation methods for predicting the number of cases of the COVID-19 pandemic. The interpolation methods include some well-known temporal interpolation algorithms including Lagrange interpolation, cubic spline interpolation, and exponential decay interpolation. These temporal interpolation algorithms enable the interpolation of the COVID-19 cases at locations where measures on prior days are available. However, pandemics are not purely temporal but spatio-temporal phenomena. Therefore, the neighboring locations need to be considered too in order to derive accurate interpolation values for future days. This paper introduces a novel spatio-temporal interpolation algorithm that is shown to be better than any purely temporal interpolation algorithm in predicting the COVID-19 cases in the continental United States. In particular, the novel spatio-temporal interpolation method achieves a mean absolute error of 8.44 cases over a million people when predicting two days ahead the number of cases of the COVID-19 pandemic.
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一种新型时空插值算法及其在COVID-19大流行中的应用
本文介绍了几种预测COVID-19大流行病例数的插值方法。插值方法包括拉格朗日插值、三次样条插值和指数衰减插值等时间插值算法。这些时间插值算法能够在有前几天测量数据的地点插值COVID-19病例。然而,大流行病不是纯粹的时间现象,而是时空现象。因此,相邻的位置也需要考虑,以便为未来的日子获得准确的插值值。本文介绍了一种新的时空插值算法,该算法在预测美国大陆COVID-19病例方面优于任何纯粹的时间插值算法。特别是,该方法在提前两天预测新冠肺炎病例数时,平均绝对误差为8.44例/百万人。
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