School of Traffic &Transportation Engineering, Central South University, Changsha, 410075, China; Department of Systems Engineering and Engineering Management, City University of Hong Kong, Hong Kong, 99907, China.
Department of Civil Engineering, The University of Hong Kong, Pokfulam Road, Hong Kong, 999077, China.
Accid Anal Prev. 2019 Oct;131:316-326. doi: 10.1016/j.aap.2019.07.012. Epub 2019 Jul 25.
Due to the wide existence of heterogeneous nature in traffic safety data, traditional methods used to investigate motorcyclist rider injury severity always lead to masking of some underlying relationships which may be critical for the formulation of efficient safety countermeasures. Instead of applying one single model to the whole dataset or focusing on pre-defined crash types as done in previous studies, the present study proposes a two-step method integrating latent class cluster analysis and random parameters logit model to explore contributing factors influencing the injury levels of motorcyclists. A latent class cluster approach is first used to segment the motorcycle crashes into relatively homogeneous clusters. A mixed logit model is then elaborately developed for each cluster to identify its unique influential factors. The analysis was based on the police-reported crash dataset (2015-2017) of Hunan province, China. The goodness-of-fit indicators and the Receiver Operating Characteristic curves show that the proposed method is more accurate when modeling the riders' injury severities. The heterogeneity found in each homogeneous subgroup supports the application of the random parameters logit model in the study. More importantly, the results demonstrate that segmenting motorcycle crashes into relatively homogeneous clusters as a preliminary step helps to uncover some important influencing factors hidden in the whole-data model. The proposed method is proved to have great potential for accounting for the source of heterogeneity. The injury risk factors identified in specific cases provide more reliable information for traffic engineers and policymakers to improve motorcycle traffic safety.
由于交通安全数据中存在广泛的异质性,传统的方法用于研究摩托车骑手伤害严重程度总是导致一些潜在关系的掩盖,这些关系可能对制定有效的安全对策至关重要。与以往的研究中对整个数据集应用单一模型或专注于预定义的碰撞类型不同,本研究提出了一种两步法,将潜在类别聚类分析和随机参数对数模型相结合,以探索影响摩托车手伤害水平的因素。首先使用潜在类别聚类方法将摩托车碰撞事故划分为相对同质的聚类。然后为每个聚类精心开发混合对数模型,以确定其独特的影响因素。该分析基于中国湖南省的警方报告的碰撞事故数据集(2015-2017 年)。拟合优度指标和接收者操作特征曲线表明,该方法在对骑手伤害严重程度进行建模时更为准确。在每个同质亚组中发现的异质性支持在研究中应用随机参数对数模型。更重要的是,结果表明,将摩托车碰撞事故划分为相对同质的聚类作为初步步骤有助于揭示整体数据模型中隐藏的一些重要影响因素。该方法被证明具有很好的解释异质性来源的潜力。在特定情况下确定的伤害风险因素为交通工程师和政策制定者提供了更可靠的信息,以改善摩托车交通安全。