Extending the Heston Model to Forecast Motor Vehicle Collision Rates
Darren Shannon, Grigorios Fountas

TL;DR
This paper introduces an extended Heston stochastic volatility model to accurately forecast short-term and long-term motor vehicle collision rates, incorporating seasonality and variability to aid policy decisions.
Contribution
It adapts the Heston model for collision rate forecasting, including new parameters for seasonality and safety periods, outperforming existing models in accuracy.
Findings
Short-term forecast accuracy exceeds 95%.
Modest safety targets can significantly reduce collision rates.
Long-term scenarios show potential for 50% reduction in collisions.
Abstract
We present an alternative approach to the forecasting of motor vehicle collision rates. We adopt an oft-used tool in mathematical finance, the Heston Stochastic Volatility model, to forecast the short-term and long-term evolution of motor vehicle collision rates. We incorporate a number of extensions to the Heston model to make it fit for modelling motor vehicle collision rates. We incorporate the temporally-unstable and non-deterministic nature of collision rate fluctuations, and introduce a parameter to account for periods of accelerated safety. We also adjust estimates to account for the seasonality of collision patterns. Using these parameters, we perform a short-term forecast of collision rates and explore a number of plausible scenarios using long-term forecasts. The short-term forecast shows a close affinity with realised rates (over 95% accuracy), and outperforms forecasting…
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