Forecasting emergency medical service call arrival rates
David S. Matteson, Mathew W. McLean, Dawn B. Woodard, Shane G., Henderson

TL;DR
This paper presents a novel count-based forecasting method for emergency call arrivals using integer-valued time series with dynamic latent factors, improving long-term accuracy and operational planning.
Contribution
The paper introduces a new forecasting approach combining integer-valued time series models with dynamic latent factors, tailored for emergency call volume prediction.
Findings
Significantly reduced forecast error in emergency call volume.
Improved ambulance system performance with better forecasts.
Quantified operational benefits through queueing model simulations.
Abstract
We introduce a new method for forecasting emergency call arrival rates that combines integer-valued time series models with a dynamic latent factor structure. Covariate information is captured via simple constraints on the factor loadings. We directly model the count-valued arrivals per hour, rather than using an artificial assumption of normality. This is crucial for the emergency medical service context, in which the volume of calls may be very low. Smoothing splines are used in estimating the factor levels and loadings to improve long-term forecasts. We impose time series structure at the hourly level, rather than at the daily level, capturing the fine-scale dependence in addition to the long-term structure. Our analysis considers all emergency priority calls received by Toronto EMS between January 2007 and December 2008 for which an ambulance was dispatched. Empirical results…
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