论文标题
COVID-19的现状确认案例:基础,趋势和挑战
Nowcasting of COVID-19 confirmed cases: Foundations, trends, and challenges
论文作者
论文摘要
2019年冠状病毒疾病(Covid-19)已成为影响全球200多个国家和领土的国际公共卫生紧急事件。截至2020年9月30日,这引起了大流行病爆发,超过3300万次确认感染,全世界有超过100万人死亡。几种统计,机器学习和混合模型以前曾试图预测Covid-19-19确认了受到深远影响国家的案件。由于时间序列数据中极端的不确定性和非机构性,对Covid-19的预测确认案件已成为一项非常具有挑战性的工作。对于单变量时间序列预测,文献中有各种统计和机器学习模型。但是,流行病预测具有可疑的记录。由于数据输入不足,建模假设的缺陷,估计值的高灵敏度,缺乏流行病学特征的纳入,对现有干预效果的过去证据不足,缺乏透明度,缺乏透明度,错误,缺乏确定性,缺乏确定性以及缺乏专业知识的专业知识,因此它的失败变得更加突出。本章重点介绍评估不同的短期预测模型,这些模型可以预测各个国家 /地区的每日Covid-19案例。本章以预测准确性的实证研究的形式提供了证据,证明没有可用的通用方法可以准确预测大流行数据。尽管如此,预报员的预测对于有效分配医疗保健资源仍然有用,并将作为政府决策者的早期制定系统。
The coronavirus disease 2019 (COVID-19) has become a public health emergency of international concern affecting more than 200 countries and territories worldwide. As of September 30, 2020, it has caused a pandemic outbreak with more than 33 million confirmed infections and more than 1 million reported deaths worldwide. Several statistical, machine learning, and hybrid models have previously tried to forecast COVID-19 confirmed cases for profoundly affected countries. Due to extreme uncertainty and nonstationarity in the time series data, forecasting of COVID-19 confirmed cases has become a very challenging job. For univariate time series forecasting, there are various statistical and machine learning models available in the literature. But, epidemic forecasting has a dubious track record. Its failures became more prominent due to insufficient data input, flaws in modeling assumptions, high sensitivity of estimates, lack of incorporation of epidemiological features, inadequate past evidence on effects of available interventions, lack of transparency, errors, lack of determinacy, and lack of expertise in crucial disciplines. This chapter focuses on assessing different short-term forecasting models that can forecast the daily COVID-19 cases for various countries. In the form of an empirical study on forecasting accuracy, this chapter provides evidence to show that there is no universal method available that can accurately forecast pandemic data. Still, forecasters' predictions are useful for the effective allocation of healthcare resources and will act as an early-warning system for government policymakers.