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A unified machine learning approach to time series forecasting applied to demand at emergency departments

机译:统一的机器学习方法时间序列预测适用于急诊部门的需求

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There were 25.6 million attendances at Emergency Departments (EDs) in England in 2019 corresponding to an increase of 12 million attendances over the past ten years. The steadily rising demand at EDs creates a constant challenge to provide adequate quality of care while maintaining standards and productivity. Managing hospital demand effectively requires an adequate knowledge of the future rate of admission. We develop a novel predictive framework to understand the temporal dynamics of hospital demand. We compare and combine state-of-the-art forecasting methods to predict hospital demand 1, 3 or 7 days into the future. In particular, our analysis compares machine learning algorithms to more traditional linear models as measured in a mean absolute error (MAE) and we consider two different hyperparameter tuning methods, enabling a faster deployment of our models without compromising performance. We believe our framework can readily be used to forecast a wide range of policy relevant indicators. We find that linear models often outperform machine learning methods and that the quality of our predictions for any of the forecasting horizons of 1, 3 or 7 days are comparable as measured in MAE. Our approach is able to predict attendances at these emergency departments one day in advance up to a mean absolute error of ±14 and ±10 patients corresponding to a mean absolute percentage error of 6.8% and 8.6% respectively. Simple linear methods like generalized linear models are often better or at least as good as ensemble learning methods like the gradient boosting or random forest algorithm. However, though sophisticated machine learning methods are not necessarily better than linear models, they improve the diversity of model predictions so that stacked predictions can be more robust than any single model including the best performing one.
机译:2019年英格兰的急诊部门(EDS)有2560万人出席,相当于过去十年增加了1200万个出席。在EDS的需求稳步上升创造了一个不断挑战,以提供足够的护理质量,同时保持标准和生产力。有效地管理医院需求需要充分了解未来的录取率。我们开发了一种新的预测框架,了解医院需求的时间动态。我们比较并结合最先进的预测方法来预测医院需​​求1,3或7天进入未来。特别是,我们的分析将机器学习算法与在平均绝对误差(MAE)中测量的更传统的线性模型进行了比较,并且我们考虑了两个不同的超参数调整方法,使我们的模型能够更快地部署而不会影响性能。我们相信我们的框架可以容易地用于预测各种政策相关指标。我们发现线性模型经常优于机器学习方法,并且对于任何预测视野的预测的质量如1,3或7天的预测,如MAE中的测量值相当。我们的方法能够在这些急诊部门预先预测这些急诊部门的出席,其平均绝对误差为±14和±10患者,分别对应于平均绝对百分比误差为6.8%和8.6%。广义线性模型等简单的线性方法通常更好或至少与渐变升压或随机林算法一样的集合学习方法。然而,尽管复杂的机器学习方法不一定比线性模型更好,但它们改善了模型预测的多样性,使得堆叠的预测比任何单一模型都比包括最佳执行的模型更鲁棒。

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