High-dimensional point forecast combinations for emergency department demand
Peihong Guo, Wen Ye Loh, Kenwin Maung, Esther Li Wen Choo, Borame Lee Dickens, Kelvin Bryan Tan, John Abishgenadan, Pei Ma, Jue Tao Lim

TL;DR
This paper introduces high-dimensional forecast combination methods for predicting emergency department admissions across multiple causes, demonstrating improved accuracy and stability over individual models using extensive covariates.
Contribution
It proposes novel high-dimensional forecast combination schemes for cause-specific ED admissions, incorporating numerous covariates and aggregation strategies to enhance forecast performance.
Findings
Forecast combinations improve accuracy by 3.81%-23.54%.
Forecast combinations outperform individual models in over 50% of scenarios.
Including high-dimensional covariates yields modest accuracy improvements.
Abstract
Current work on forecasting emergency department (ED) admissions focuses on disease aggregates or singular disease types. However, given differences in the dynamics of individual diseases, it is unlikely that any single forecasting model would accurately account for each disease and for all time, leading to significant forecast model uncertainty. Yet, forecasting models for ED admissions to-date do not explore the utility of forecast combinations to improve forecast accuracy and stability. It is also unknown whether improvements in forecast accuracy can be yield from (1) incorporating a large number of environmental and anthropogenic covariates or (2) forecasting total ED causes by aggregating cause-specific ED forecasts. To address this gap, we propose high-dimensional forecast combination schemes to combine a large number of forecasting individual models for forecasting cause-specific…
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