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A Review of Data Analytic Applications in Road Traffic Safety. Part 2: Prescriptive Modeling

机译:数据分析在道路交通安全中的应用综述。第2部分:说明性建模

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摘要

In the first part of the review, we observed that there exists a significant gap between the predictive and prescriptive models pertaining to crash risk prediction and minimization, respectively. In this part, we review and categorize the optimization/ prescriptive analytic models that focus on minimizing crash risk. Although the majority of works in this segment of the literature are related to the hazardous materials (hazmat) trucking problems, we show that (with some exceptions) many can also be utilized in non-hazmat scenarios. In an effort to highlight the effect of crash risk prediction model on the accumulated risk obtained from the prescriptive model, we present a simulated example where we utilize four risk indicators (obtained from logistic regression, Poisson regression, XGBoost, and neural network) in the -shortest path algorithm. From our example, we demonstrate two major designed takeaways: (a) the shortest path may not always result in the lowest crash risk, and (b) a similarity in overall predictive performance may not always translate to similar outcomes from the prescriptive models. Based on the review and example, we highlight several avenues for future research.
机译:在审查的第一部分中,我们观察到分别与碰撞风险预测和最小化有关的预测模型和规范模型之间存在显着差距。在这一部分中,我们将对优化/规范分析模型进行回顾和分类,这些模型的重点是最大程度地降低撞车风险。尽管这部分文献中的大部分工作都与有害物质(危险品)运输问题有关,但我们证明(除某些例外)许多物品也可用于非危险品场景。为了强调碰撞风险预测模型对从规范性模型获得的累积风险的影响,我们提供了一个模拟示例,其中我们使用了四个风险指标(从逻辑回归,泊松回归,XGBoost和神经网络获得)。 -最短路径算法。从我们的示例中,我们展示了两个主要的设计要点:(a)最短路径可能并不总是导致最低的崩溃风险,并且(b)总体预测性能的相似性可能并不总是转化为说明性模型的相似结果。根据评论和示例,我们重点介绍了未来研究的几种途径。

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