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Support vector machine in crash prediction at the level of traffic analysis zones: Assessing the spatial proximity effects

机译:支持向量机在交通分析区域级别的碰撞预测中:评估空间邻近效应

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In zone-level crash prediction, accounting for spatial dependence has become an extensively studied topic. This study proposes Support Vector Machine (SVM) model to address complex, large and multidimensional spatial data in crash prediction. Correlation-based Feature Selector (CFS) was applied to evaluate candidate factors possibly related to zonal crash frequency in handling high-dimension spatial data. To demonstrate the proposed approaches and to compare them with the Bayesian spatial model with conditional autoregressive prior (i.e., CAR), a dataset in Hillsborough county of Florida was employed. The results showed that SVM models accounting for spatial proximity outperform the non-spatial model in terms of model fitting and predictive performance, which indicates the reasonableness of considering cross-zonal spatial correlations. The best model predictive capability, relatively, is associated with the model considering proximity of the centroid distance by choosing the RBF kernel and setting the 10% of the whole dataset as the testing data, which further exhibits SVM models' capacity for addressing comparatively complex spatial data in regional crash prediction modeling. Moreover, SVM models exhibit the better goodness-of-fit compared with CAR models when utilizing the whole dataset as the samples. A sensitivity analysis of the centroid-distance-based spatial SVM models was conducted to capture the impacts of explanatory variables on the mean predicted probabilities for crash occurrence. While the results conform to the coefficient estimation in the CAR models, which supports the employment of the SVM model as an alternative in regional safety modeling. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在区域级碰撞预测中,考虑空间依赖性已成为广泛研究的主题。这项研究提出了支持向量机(SVM)模型,以解决碰撞预测中的复杂,大型和多维空间数据。基于相关性的特征选择器(CFS)用于评估在处理高维空间数据时可能与区域碰撞频率相关的候选因素。为了演示所提出的方法并将其与具有条件自回归先验条件(即CAR)的贝叶斯空间模型进行比较,采用了佛罗里达希尔斯伯勒县的数据集。结果表明,在模型拟合和预测性能方面,考虑空间邻近性的SVM模型优于非空间模型,这表明考虑跨区域空间相关性的合理性。相对而言,最佳模型预测能力与通过考虑RBF内核并将整个数据集的10%设置为测试数据来考虑质心距离的接近度的模型相关联,这进一步展示了SVM模型处理相对复杂空间的能力区域碰撞预测建模中的数据。此外,当将整个数据集用作样本时,与CAR模型相比,SVM模型具有更好的拟合优度。进行了基于质心距离的空间SVM模型的敏感性分析,以捕获解释变量对发生碰撞的平均预测概率的影响。虽然结果与CAR模型中的系数估计相符,但这支持使用SVM模型作为区域安全模型中的替代方法。 (C)2015 Elsevier Ltd.保留所有权利。

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