Exploring injury severity of pedestrian-vehicle crashes at intersections: unbalanced panel mixed ordered probit model

被引:0
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作者
Željko Šarić
Xuecai Xu
Daiquan Xiao
Joso Vrkljan
机构
[1] University of Zagreb,Department of Traffic Accident Expertise, Faculty of Transport and Traffic Sciences
[2] Huazhong University of Science and Technology,School of Civil and Hydraulic Engineering
[3] Polytechnic “Nikola Tesla”,undefined
来源
关键词
Injury severity; Pedestrian-vehicle crash; Unbalanced panel mixed ordered probit model; Random parameter ordered probit model;
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摘要
Although the pedestrian deaths have been declining in recent years, the pedestrian-vehicle death rate in Croatia is still pretty high. This study intended to explore the injury severity of pedestrian-vehicle crashes with panel mixed ordered probit model and identify the influencing factors at intersections. To achieve this objective, the data were collected from Ministry of the Interior, Republic of Croatia from 2015 to 2018. Compared to the equivalent random-effects and random parameter ordered probit models, the proposed model showed better performance on goodness-of-fit, while capturing the impact of exogenous variables to vary among the intersections, as well as accommodating the heterogeneity issue due to unobserved effects. Results revealed that the proposed model can be considered as an alternative to deal with the heterogeneity issue and to decide the factor determinants. The results may provide beneficial insight for reducing the injury severity of pedestrian-vehicle crashes.
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