Hierarchical Time Series Forecasting in Emergency Medical Services

B. Rostami-Tabar, Rob J. Hyndman
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引用次数: 1

Abstract

Accurate forecasts of ambulance demand are crucial inputs when planning and deploying staff and fleet. Such demand forecasts are required at national, regional, and sub-regional levels and must take account of the nature of incidents and their priorities. These forecasts are often generated independently by different teams within the organization. As a result, forecasts at different levels may be inconsistent, resulting in conflicting decisions and a lack of coherent coordination in the service. To address this issue, we exploit the hierarchical and grouped structure of the demand time series and apply forecast reconciliation methods to generate both point and probabilistic forecasts that are coherent and use all the available data at all levels of disaggregation. The methods are applied to daily incident data from an ambulance service in Great Britain, from October 2015 to July 2019, disaggregated by nature of incident, priority, managing health board, and control area. We use an ensemble of forecasting models and show that the resulting forecasts are better than any individual forecasting model. We validate the forecasting approach using time series cross-validation.
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紧急医疗服务中的分层时间序列预测
在规划和部署人员和车队时,对救护车需求的准确预测是至关重要的投入。这种需求预测需要在国家、区域和次区域层面进行,并且必须考虑到事故的性质及其优先次序。这些预测通常由组织内的不同团队独立生成。因此,不同级别的预测可能不一致,从而导致决策冲突和服务缺乏连贯性协调。为了解决这个问题,我们利用需求时间序列的分层和分组结构,并采用预测协调方法生成点预测和概率预测,这些预测是一致的,并使用了所有分类级别的所有可用数据。我们将这些方法应用于英国一家救护车服务机构 2015 年 10 月至 2019 年 7 月期间的每日事故数据,这些数据按事故性质、优先级、管理卫生局和控制区分列。我们使用了一组预测模型,结果表明预测结果优于任何单个预测模型。我们使用时间序列交叉验证验证了预测方法。
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