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Exploring the modeling and site-ranking performance of Bayesian spatiotemporal crash frequency models with mixture components

机译:探索具有混合成分的贝叶斯时空碰撞频率模型的建模和现场排序性能

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摘要

The current study introduces the flexible approach of mixture components to model the spatiotemporal interaction for ranking of hazardous sites and compares the model performance with the conventional methods. In case of predictive accuracy based on in-sample errors (posterior deviance), the Mixture-5 demonstrated superior performance in majority of the cases, indicating the advantage of mixture approach to accurately predict crash counts. LPML (log pseudo marginal likelihood) was also calculated as a cross-validation measure based on out-of-sample errors and this criterion also established the dominance of Mixture-5, further reinforcing the superiority of the mixture approach from different perspectives.The site ranking evaluation results demonstrated the advantages of adopting the mixture approach. In terms of total rank difference (TRD) results, there were several discrepancies between the two approaches, suggesting that two approaches designate unsafe sites differently. Another site ranking criterion, site consistency test (SCT), was employed to explore the difference in identification of unsafe sites based on two datasets: estimated crash count (traditional) and the spatial variability across time. The advantage of mixture models to act as a complimentary approach for site ranking was revealed by the spatial variability SCT results. The method consistency test (MCT) results also indicate the advantages of mixture models over the Base one. These findings suggested that mixture approach may prove helpful in the network screening step of safety management process to identify sites which may turn unsafe in the future and escape the detection from traditional methods.
机译:当前的研究引入了混合成分的灵活方法来对时空相互作用进行建模,以对危险场所进行排名,并将模型性能与常规方法进行比较。在基于样本内误差(后偏差)的预测准确性的情况下,Mixture-5在大多数情况下均表现出优异的性能,这表明混合方法可准确预测碰撞次数。还基于样本外误差计算了LPML(对数伪边际可能性)作为交叉验证量度,该标准还确立了Mixture-5的优势地位,从不同角度进一步增强了混合方法的优越性。排名评估结果证明了采用混合方法的优势。就总等级差异(TRD)结果而言,两种方法之间存在一些差异,这表明两种方法对不安全地点的指定不同。另一个站点排名标准,即站点一致性测试(SCT),用于基于两个数据集探索不安全站点的识别差异:估计​​的崩溃计数(传统)和跨时间的空间变异性。空间变异性SCT结果显示了混合模型作为站点排名的一种补充方法的优势。方法一致性测试(MCT)结果也表明混合模型比基础模型更具优势。这些发现表明,混合方法可能在安全管理过程的网络筛选步骤中被证明是有用的,以识别将来可能变得不安全并逃避传统方法检测的站点。

著录项

  • 来源
    《Accident Analysis & Prevention 》 |2020年第2期| 105357.1-105357.11| 共11页
  • 作者

  • 作者单位

    Calif State Polytech Univ Pomona Dept Civil Engn 3801 W Temple Ave Pomona CA 91768 USA;

    Southern Calif Assoc Govt 818 West 7th St 12th Floor Los Angeles CA 90017 USA;

    Cent South Univ Forestry & Technol Logist & Traff Coll Dept Logist Engn Changsha 41000430 Hunan Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Mixture; Spatiotemporal; Interaction; Predictive accuracy; Cross validation; Site ranking;

    机译:混合物;时空相互作用;预测精度;交叉验证;网站排名;

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