Statistics > Other Statistics
[Submitted on 9 Apr 2020 (v1), last revised 24 May 2020 (this version, v4)]
Title:Learning as We Go: An Examination of the Statistical Accuracy of COVID19 Daily Death Count Predictions
View PDFAbstract:This paper provides a formal evaluation of the predictive performance of a model (and its various updates) developed by the Institute for Health Metrics and Evaluation (IHME) for predicting daily deaths attributed to COVID19 for each state in the United States. The IHME models have received extensive attention in social and mass media, and have influenced policy makers at the highest levels of the United States government. For effective policy making the accurate assessment of uncertainty, as well as accurate point predictions, are necessary because the risks inherent in a decision must be taken into account, especially in the present setting of a novel disease affecting millions of lives. To assess the accuracy of the IHME models, we examine both forecast accuracy as well as the predictive performance of the 95% prediction intervals provided by the IHME models. We find that the initial IHME model underestimates the uncertainty surrounding the number of daily deaths substantially. Specifically, the true number of next day deaths fell outside the IHME prediction intervals as much as 70% of the time, in comparison to the expected value of 5%. In addition, we note that the performance of the initial model does not improve with shorter forecast horizons. Regarding the updated models, our analyses indicate that the later models do not show any improvement in the accuracy of the point estimate predictions. In fact, there is some evidence that this accuracy has actually decreased over the initial models. Moreover, when considering the updated models, while we observe a larger percentage of states having actual values lying inside the 95% prediction intervals (PI), our analysis suggests that this observation may be attributed to the widening of the PIs. The width of these intervals calls into question the usefulness of the predictions to drive policy making and resource allocation.
Submission history
From: Roman Marchant [view email][v1] Thu, 9 Apr 2020 01:12:12 UTC (2,346 KB)
[v2] Fri, 24 Apr 2020 02:58:24 UTC (4,101 KB)
[v3] Mon, 4 May 2020 01:00:28 UTC (4,101 KB)
[v4] Sun, 24 May 2020 12:38:22 UTC (5,915 KB)
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