Use of a model-based gradient boosting framework to assess spatial and non-linear effects of variables on pedestrian crash frequency at macro-level

IF 2.4 3区 工程技术 Q3 TRANSPORTATION
D. Saha, Eric Dumbaugh
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引用次数: 5

Abstract

Abstract This paper presents a study that evaluates the nature of the associations (i.e., linear or non-linear) between built environment variables and pedestrian crash frequency at the census block group level. A machine learning approach, called the componentwise model-based gradient boosting algorithm, was implemented to estimate the nature and effects of sociodemographic, land use, road network, and traffic attributes on pedestrian crashes from Broward and Miami-Dade Counties in Florida. The algorithm provides the flexibility to use different types of base-learners, including but not limited to decision tree (DT), generalized additive model (GAM), and Markov Random Field (MRF). While gradient boosting with DT base-learner has widely been used in safety studies, other base-learners and their performances in crash frequency predictions are yet to be explored. This study compared the performance of DT and GAM base-learners, with an MRF base-learner to account for spatial correlation among analysis units. Models fitted with GAM base-learner were found to perform better than the models fitted with DT base-learner, with several variables showing non-linear and several showing linear or approximately linear correlations with pedestrian crash frequency. The study provides useful insights on how the results can help urban planners and policy makers to optimize pedestrian safety measures.
使用基于模型的梯度增强框架在宏观层面上评估变量对行人碰撞频率的空间和非线性影响
摘要本文提出了一项研究,在人口普查街区水平上评估建筑环境变量与行人碰撞频率之间的关系(即线性或非线性)的性质。采用了一种称为基于组件模型的梯度增强算法的机器学习方法,以估计佛罗里达州布劳沃德县和迈阿密-戴德县的社会人口统计学、土地利用、道路网络和交通属性对行人碰撞的性质和影响。该算法提供了使用不同类型的基础学习器的灵活性,包括但不限于决策树(DT)、广义加性模型(GAM)和马尔可夫随机场(MRF)。虽然基于DT基础学习器的梯度增强在安全研究中得到了广泛的应用,但其他基础学习器及其在碰撞频率预测中的性能尚未得到探索。本研究比较了DT和GAM基础学习器的性能,并使用MRF基础学习器来解释分析单元之间的空间相关性。使用GAM基础学习器的模型比使用DT基础学习器的模型表现得更好,有几个变量与行人碰撞频率呈非线性关系,有几个变量与行人碰撞频率呈线性或近似线性关系。该研究为如何帮助城市规划者和决策者优化行人安全措施提供了有用的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.00
自引率
15.40%
发文量
38
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