School of Transportation, Southeast University, Sipailou 2, Xuanwu District, Nanjing, 210096, China; Department of Civil and Transportation Engineering, The Hong Kong Polytechnic University, China.
School of Transportation, Southeast University, Sipailou 2, Xuanwu District, Nanjing, 210096, China.
Accid Anal Prev. 2021 Aug;158:106192. doi: 10.1016/j.aap.2021.106192. Epub 2021 May 21.
Crash severity model is a classical topic in road safety research. The multinomial logit (MNL) model, as a basic discrete outcome method, is widely applied to measure the association between crash severity and possible risk factors. However, the MNL model has several assumptions and properties that are possibly not consistent with the actual crash mechanism, and therefore with the association measure for crash severity. One significant attribute is the variation in drivers' safety perception. Risk-taking drivers tends to drive at a higher speed, which increases the likelihood of severe crashes. However, the variations in speed and other driving performance lead to the error in the utility function more profound. This violates the assumption of identical error distributions between different crash severity outcomes. In this paper, we propose a multinomial multiplicative (MNM) model, as an alternative for crash severity model. There are two possible formulations for the proposed MNM model: (1) Weibull and (2) Fréchet, according to the distributions of random propensities and subject to the signs of the systematic parts of the regression equation. The two heavy-tailed distributions can capture the effect of unobserved contributory factors on crash injury severity. Additionally, the MNM model can incorporate the effects of the non-identical, heavy-tailed, and asymmetric properties of the distribution, whereas the conventional MNL model cannot. Several operational considerations are also attempted in this study, including the specifications of the systematic parts and the interpretations of the parameters. The MNM model is further extended to the mixed MNM (MMNM) model by considering unobserved heterogeneities using random coefficients, while the mixed MNL (MMNL) model is used as the benchmark model. The proposed MMNM model is calibrated using the crash dataset obtained from the Guangdong Province, China. Results indicated that the proposed MMNM model outperformed the MMNL model in this case. Also, the results of parameter estimates are indicative to impact factors on crash severity as well as the design and implementation of policies. This justified the use of MMNM model as an alternative for crash severity model in practice. This is the first application of MMNM model in the traffic safety literature, it is worth exploring the application of other advanced multiplicative models for safety analysis in the future.
事故严重度模型是道路安全研究中的一个经典课题。多项逻辑回归(MNL)模型作为一种基本的离散结果方法,被广泛应用于测量事故严重度与可能的风险因素之间的关联。然而,MNL 模型有几个假设和性质可能与实际的事故机制不一致,因此也与事故严重度的关联测量不一致。一个重要的属性是驾驶员安全感知的变化。冒险型驾驶员往往会以更高的速度行驶,这增加了发生严重事故的可能性。然而,速度和其他驾驶行为的变化会导致效用函数中的误差更加显著。这违反了不同事故严重度结果之间误差分布相同的假设。在本文中,我们提出了一种多项乘法(MNM)模型,作为事故严重度模型的一种替代方法。所提出的 MNM 模型有两种可能的形式:(1)威布尔分布和(2)弗雷歇分布,这取决于随机倾向的分布,并受回归方程系统部分符号的约束。这两种长尾分布可以捕捉未观测到的促成因素对事故伤害严重度的影响。此外,MNM 模型可以包含分布的非相同、长尾和不对称特性的影响,而传统的 MNL 模型则不能。本研究还尝试了一些操作方面的考虑,包括系统部分的规范和参数的解释。通过使用随机系数考虑未观测到的异质性,MNM 模型进一步扩展为混合 MNM(MMNM)模型,同时将混合 MNL(MMNL)模型作为基准模型。使用来自中国广东省的事故数据集对所提出的 MMNM 模型进行校准。结果表明,在所研究的案例中,所提出的 MMNM 模型优于 MMNL 模型。此外,参数估计结果表明了对事故严重度的影响因素以及政策的设计和实施。这证明了在实践中使用 MMNM 模型作为事故严重度模型的替代方法是合理的。这是 MMNM 模型在交通安全文献中的首次应用,未来值得探索其他先进乘法模型在安全分析中的应用。