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 (95% accuracy). The long-term scenarios suggest that modest targets to reduce collision rates (1.83% annually) and targets to reduce the fluctuations of month-to-month collision rates (by half) could have significant benefits for road safety. The median forecast in this scenario suggests a 50% fall in collision rates, with 75% of simulations suggesting that an effective change in collision rates is observed before 2044. The main benefit the model provides is eschewing the necessity for setting unreasonable safety targets that are often missed. Instead, the model presents the effects that modest and achievable targets can have on road safety over the long run, while incorporating random variability. Examining the parameters that underlie expected collision rates will aid policymakers in determining the effectiveness of implemented policies.
翻译:我们提出了机动车辆碰撞率预测的替代方法。我们采用了数学融资中常用的工具Heston Stochastic波动模型,以预测机动车辆碰撞率的短期和长期演变情况。我们采用了赫斯顿模型的一些扩展,以使之适合模拟机动车辆碰撞率。我们采用了碰撞率波动在时间上不稳定和非确定性的性质,并引入了计算加速安全时期的参数。我们还根据碰撞模式的季节性调整了决策者估计数。我们使用这些参数,对碰撞率作了短期预测,并用长期预测来探讨一些合理的假设。短期预测显示,赫斯顿模型的近距离接近实现率(95%的准确性)。长期预测表明,降低碰撞率(每年1.83%)和降低月与月之间碰撞率波动的适度目标(一半)可能会对道路安全产生重大效益。这一假设的中位预测表明,碰撞率下降率为50 %, 使用75 % 的模拟模型表明, 实际的概率政策与已实现的精确率(95% ), 设定的预期目标是超过20的。