撞车
行人
随机森林
决策树
毒物控制
统计
回归分析
贝叶斯概率
工程类
机器学习
计算机科学
运输工程
人工智能
数学
医学
医疗急救
程序设计语言
作者
Bo Zhao,Natalia Zuniga-Garcia,Lu Xing,Kara M. Kockelman
标识
DOI:10.1080/03081060.2023.2216202
摘要
This study investigates the frequency and injury severity of pedestrian crashes across Texas using tree-based machine learning models. Ten years of police records are used along with roadway inventory and other sources to map 78,000 + pedestrian crashes over 700,000 road segments. Methods like random forests (RF), gradient boosting (LightGBM and XGBoost), and Bayesian additive regression trees (XBART) are applied and compared. The crash frequency models indicate that highway design variables have significant impacts on crash frequencies. Severity models show how higher speed limits significantly increase the likelihood of pedestrian fatalities and severe injuries, and how intoxication (of drivers or pedestrians) lead to more severe injuries. The 4 specifications perform similarly in predicting crash counts, with LightGBM having much faster computing times. Across the crash-severity models, XBART achieved greater precision values but with significantly higher computating times.
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