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A human judgment approach to epidemiological forecasting

机译:流行病学预测的人为判断方法

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摘要

Infectious diseases impose considerable burden on society, despite significant advances in technology and medicine over the past century. Advanced warning can be helpful in mitigating and preparing for an impending or ongoing epidemic. Historically, such a capability has lagged for many reasons, including in particular the uncertainty in the current state of the system and in the understanding of the processes that drive epidemic trajectories. Presently we have access to data, models, and computational resources that enable the development of epidemiological forecasting systems. Indeed, several recent challenges hosted by the U.S. government have fostered an open and collaborative environment for the development of these technologies. The primary focus of these challenges has been to develop statistical and computational methods for epidemiological forecasting, but here we consider a serious alternative based on collective human judgment. We created the web-based “Epicast” forecasting system which collects and aggregates epidemic predictions made in real-time by human participants, and with these forecasts we ask two questions: how accurate is human judgment, and how do these forecasts compare to their more computational, data-driven alternatives? To address the former, we assess by a variety of metrics how accurately humans are able to predict influenza and chikungunya trajectories. As for the latter, we show that real-time, combined human predictions of the 2014–2015 and 2015–2016 U.S. flu seasons are often more accurate than the same predictions made by several statistical systems, especially for short-term targets. We conclude that there is valuable predictive power in collective human judgment, and we discuss the benefits and drawbacks of this approach.
机译:尽管在过去的一个世纪中技术和医学取得了重大进步,但传染病给社会带来了沉重负担。提前警告可能有助于缓解流行病或为流行病做好准备。从历史上看,这种能力由于许多原因而落后,特别是包括系统当前状态的不确定性以及对驱动流行轨迹的过程的了解。目前,我们可以访问能够开发流行病学预测系统的数据,模型和计算资源。实际上,美国政府最近面临的几个挑战为这些技术的发展营造了开放和协作的环境。这些挑战的主要焦点一直是开发流行病学预测的统计和计算方法,但在此我们考虑基于集体人类判断的严肃选择。我们创建了基于网络的“ Epicast”预测系统,该系统收集并汇总了人类参与者实时进行的流行病预测,并针对这些预测提出了两个问题:人类判断的准确性如何,以及这些预测与他们的预测相比如何?计算,数据驱动的替代方案?为了解决前者,我们通过各种指标来评估人类预测流感和基孔肯雅热轨迹的准确度。对于后者,我们表明,人类对2014-2015年和2015-2016年美国流感季节的实时综合预测通常比几种统计系统所作的相同预测更为准确,尤其是对于短期目标而言。我们得出结论,在集体的人类判断中有宝贵的预测能力,并且我们讨论了这种方法的利弊。

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