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具有滞后观测因变量的多元动态 Tobit 模型:公路安全法的有效性分析。

Multivariate dynamic Tobit models with lagged observed dependent variables: An effectiveness analysis of highway safety laws.

机构信息

Center for Transportation Research, Tickle College of Engineering, University of Tennessee, 600 Henley Street, Knoxville, TN 37996, USA; School of Traffic & Transportation, Beijing Jiaotong University, Beijing 100044, China.

Department of Mechanical, Aerospace, & Biomedical Engineering, College of Engineering, University of Tennessee, 1512 Middle Drive, 414 Dougherty, Knoxville, TN 37996-2210, USA; School of Traffic & Transportation, Beijing Jiaotong University, Beijing 100044, China.

出版信息

Accid Anal Prev. 2018 Apr;113:292-302. doi: 10.1016/j.aap.2018.01.039. Epub 2018 Mar 7.

Abstract

Highway safety laws aim to influence driver behaviors so as to reduce the frequency and severity of crashes, and their outcomes. For one specific highway safety law, it would have different effects on the crashes across severities. Understanding such effects can help policy makers upgrade current laws and hence improve traffic safety. To investigate the effects of highway safety laws on crashes across severities, multivariate models are needed to account for the interdependency issues in crash counts across severities. Based on the characteristics of the dependent variables, multivariate dynamic Tobit (MVDT) models are proposed to analyze crash counts that are aggregated at the state level. Lagged observed dependent variables are incorporated into the MVDT models to account for potential temporal correlation issues in crash data. The state highway safety law related factors are used as the explanatory variables and socio-demographic and traffic factors are used as the control variables. Three models, a MVDT model with lagged observed dependent variables, a MVDT model with unobserved random variables, and a multivariate static Tobit (MVST) model are developed and compared. The results show that among the investigated models, the MVDT models with lagged observed dependent variables have the best goodness-of-fit. The findings indicate that, compared to the MVST, the MVDT models have better explanatory power and prediction accuracy. The MVDT model with lagged observed variables can better handle the stochasticity and dependency in the temporal evolution of the crash counts and the estimated values from the model are closer to the observed values. The results show that more lives could be saved if law enforcement agencies can make a sustained effort to educate the public about the importance of motorcyclists wearing helmets. Motor vehicle crash-related deaths, injuries, and property damages could be reduced if states enact laws for stricter text messaging rules, higher speeding fines, older licensing age, and stronger graduated licensing provisions. Injury and PDO crashes would be significantly reduced with stricter laws prohibiting the use of hand-held communication devices and higher fines for drunk driving.

摘要

道路安全法旨在影响驾驶员的行为,以减少事故的频率和严重程度及其后果。对于特定的道路安全法,它会对不同严重程度的事故产生不同的影响。了解这些影响可以帮助政策制定者升级现有的法律,从而提高交通安全。为了研究道路安全法对不同严重程度事故的影响,需要使用多元模型来解决事故次数在不同严重程度之间的相关性问题。基于因变量的特点,提出了多元动态 Tobit (MVDT)模型来分析按州汇总的事故次数。滞后观察到的因变量被纳入 MVDT 模型中,以解决事故数据中潜在的时间相关性问题。将与州道路安全法相关的因素作为解释变量,将社会人口统计学和交通因素作为控制变量。开发并比较了三个模型,即具有滞后观察因变量的 MVDT 模型、具有未观察到随机变量的 MVDT 模型和多元静态 Tobit (MVST)模型。结果表明,在所研究的模型中,具有滞后观察因变量的 MVDT 模型具有最佳的拟合优度。研究结果表明,与 MVST 相比,MVDT 模型具有更强的解释能力和预测精度。具有滞后观察变量的 MVDT 模型可以更好地处理事故次数在时间演变中的随机性和相关性,并且模型的估计值更接近观察值。结果表明,如果执法机构能够持续努力向公众宣传骑摩托车戴头盔的重要性,就可以挽救更多的生命。如果各州颁布更严格的短信规则、更高的超速罚款、更高的驾照年龄限制和更强有力的分级驾照规定,就可以减少与机动车碰撞相关的死亡、伤害和财产损失。如果颁布更严格的禁止使用手持通讯设备的法律和对酒后驾车的更高罚款,伤害和 PDO 事故将显著减少。

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