论文标题
短期预测COVID-19累计确认案例:巴西的观点
Short-term forecasting COVID-19 cumulative confirmed cases: Perspectives for Brazil
论文作者
论文摘要
新的冠状病毒(COVID-19)是一种新兴疾病,负责自当今第一次通知以来感染数百万人。开发有效的短期预测模型允许了解未来案例的数量。在这种情况下,有可能在公共卫生系统中制定战略规划,以避免死亡。在本文中,在时间序列的任务中,在时间,三天和六天的时间序列中,评估了自回旋的集成移动平均值(ARIMA),立体主义者(立体主义者(立体主义者),随机森林(RF),山脊回归(RF),脊回归(RF),支持向量回归(SVR)和堆叠式学习学习。在堆叠学习方法中,立体派,RF,Ridge和SVR模型被用作基础学习者和高斯过程(GP)作为元学习者。根据改进指数,平均绝对误差和对称的绝对百分比误差标准评估模型的有效性。在大多数情况下,SVR和堆叠合奏学习在采用标准方面的表现要比比较模型更好。通常,开发的模型可以产生准确的预测,分别在0.87%-3.51%,1.02%-5.63%和0.95%和0.95%-6.90%的范围内达到错误。在所有情况下,模型的排名均为SVR,堆叠集合学习,Arima,Cobist,Ridge和RF模型。建议使用评估模型来预测和监视Covid-19案例的持续增长,一旦这些模型可以帮助管理人员参与决策支持系统。
The new Coronavirus (COVID-19) is an emerging disease responsible for infecting millions of people since the first notification until nowadays. Developing efficient short-term forecasting models allow knowing the number of future cases. In this context, it is possible to develop strategic planning in the public health system to avoid deaths. In this paper, autoregressive integrated moving average (ARIMA), cubist (CUBIST), random forest (RF), ridge regression (RIDGE), support vector regression (SVR), and stacking-ensemble learning are evaluated in the task of time series forecasting with one, three, and six-days ahead the COVID-19 cumulative confirmed cases in ten Brazilian states with a high daily incidence. In the stacking learning approach, the cubist, RF, RIDGE, and SVR models are adopted as base-learners and Gaussian process (GP) as meta-learner. The models' effectiveness is evaluated based on the improvement index, mean absolute error, and symmetric mean absolute percentage error criteria. In most of the cases, the SVR and stacking ensemble learning reach a better performance regarding adopted criteria than compared models. In general, the developed models can generate accurate forecasting, achieving errors in a range of 0.87% - 3.51%, 1.02% - 5.63%, and 0.95% - 6.90% in one, three, and six-days-ahead, respectively. The ranking of models in all scenarios is SVR, stacking ensemble learning, ARIMA, CUBIST, RIDGE, and RF models. The use of evaluated models is recommended to forecasting and monitor the ongoing growth of COVID-19 cases, once these models can assist the managers in the decision-making support systems.