The number of Covid-19 cases is increasing dramatically worldwide. Therefore, the availability of reliable forecasts for the number of cases in the coming days is of fundamental importance. We propose a simple statistical method for short-term real-time forecasting of the number of Covid-19 cases and fatalities in countries that are latecomers -- i.e., countries where cases of the disease started to appear some time after others. In particular, we propose a penalized (LASSO) regression with an error correction mechanism to construct a model of a latecomer in terms of the other countries that were at a similar stage of the pandemic some days before. By tracking the number of cases and deaths in those countries, we forecast through an adaptive rolling-window scheme the number of cases and deaths in the latecomer. We apply this methodology to Brazil, and show that (so far) it has been performing very well. These forecasts aim to foster a better short-run management of the health system capacity.
翻译:全世界范围内的Covid-19病例数量正在急剧增加,因此,对今后几天的病例数量提供可靠的预测至关重要。我们建议采用简单的统计方法,对迟到的国家(即疾病病例开始在其他国家之后一段时间出现的国家)的Covid-19病例数量和死亡人数进行短期实时实时预测。特别是,我们建议采用惩罚性(LASSO)回归机制,以建立与几天前处于类似流行病阶段的其他国家相比的迟到者模式。通过跟踪这些国家的病例和死亡人数,我们通过适应性滚式风计划预测迟到者病例和死亡人数。我们将这种方法应用于巴西,并表明巴西的情况一直很好。这些预测的目的是促进卫生系统能力更好的短期管理。