A unified machine learning approach to time series forecasting applied to demand at emergency departments.
Michaela A C VollmerBen GlampsonThomas MellanSwapnil MishraLuca MercuriCeire CostelloRobert KlaberGraham CookeSeth FlaxmanSamir BhattPublished in: BMC emergency medicine (2021)
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.