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Pandemic velocity: Forecasting COVID-19 in the US with a machine learning & Bayesian time series compartmental model

机译:大流行速度:通过机器学习&amp预测Covid-19; 贝叶斯时间序列隔间模型

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Predictions of COVID-19 case growth and mortality are critical to the decisions of political leaders, businesses, and individuals grappling with the pandemic. This predictive task is challenging due to the novelty of the virus, limited data, and dynamic political and societal responses. We embed a Bayesian time series model and a random forest algorithm within an epidemiological compartmental model for empirically grounded COVID-19 predictions. The Bayesian case model fits a location-specific curve to the velocity (first derivative) of the log transformed cumulative case count, borrowing strength across geographic locations and incorporating prior information to obtain a posterior distribution for case trajectories. The compartmental model uses this distribution and predicts deaths using a random forest algorithm trained on COVID-19 data and population-level characteristics, yielding daily projections and interval estimates for cases and deaths in U.S. states. We evaluated the model by training it on progressively longer periods of the pandemic and computing its predictive accuracy over 21-day forecasts. The substantial variation in predicted trajectories and associated uncertainty between states is illustrated by comparing three unique locations: New York, Colorado, and West Virginia. The sophistication and accuracy of this COVID-19 model offer reliable predictions and uncertainty estimates for the current trajectory of the pandemic in the U.S. and provide a platform for future predictions as shifting political and societal responses alter its course.
机译:对Covid-19例的预测成长和死亡率对政治领导人,企业和个人与大流行的决定至关重要。由于病毒,数据有限和动态政治和社会反应的新颖性,这种预测任务是挑战。我们在流行病学分区模型中嵌入了贝叶斯时间序列模型和随机林算法,以进行经验接地的Covid-19预测。贝叶斯案例模型适用于日志变换的速度(第一导数)的位置特定的曲线,累计案例计数,跨地理位置的借用强度,并结合了先前信息以获得案例轨迹的后部分布。分区模型使用这种分布,并使用在Covid-19数据和人口级特征上培训的随机森林算法预测死亡,从而产生每日预测和美国国家的病例和死亡的间隔估计。我们通过在大流行逐步培训并计算其预测精度超过21天预测的预测准确性来评估该模型。通过比较三个独特的地点来说明预测轨迹和各国之间相关不确定性的大幅度变化:纽约,科罗拉多州和西弗吉尼亚州。这种Covid-19模型的复杂性和准确性为美国大流行的当前轨迹提供了可靠的预测和不确定性估计,为未来的预测提供了平台,因为转移政治和社会反应改变了其课程。

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