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Predicting Freeway Incident Duration Using Machine Learning

机译:使用机器学习预测高速公路事故持续时间

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Traffic incident duration provides valuable information for traffic management officials and road users alike. Conventional mathematical models may not necessarily capture the complex interaction between the many variables affecting incident duration. This paper summarizes the application of five state-of-the-art machine learning (ML) models for predicting traffic incident duration. More than 110,000 incident records with over 52 variables were retrieved from Houston TranStar data archive. The attempted ML techniques include: regression decision tree, support vector machine (SVM), ensemble tree (bagged and boosted), Gaussian process regression (GPR), and artificial neural networks (ANN). These methods are known to effectively handle extensive and complex datasets. Towards achieving the best modeling accuracy, the parameters of each of these models were fine-tuned. The results showed that the SVMand GPR models outperformed other techniques in terms of the mean absolute error (MAE) with the best model scoring an MAE of 14.34 min. On the other hand, the simple regression tree was the worst overall model with anMAE of 16.74 min. In terms of training time, a considerable difference was found between two groups of models: regression decision tree, ensemble tree, and ANN on one hand and SVM and GPR on the other. The former required shorter training time (less than one hour each) whereas the latter had training times ranging between 5 to 34 hours per model.
机译:交通事故持续时间为交通管理官员和道路使用者提供了宝贵的信息。传统的数学模型可能不一定捕获影响事件持续时间的许多变量之间的复杂相互作用。本文总结了五个最新的机器学习(ML)模型在预测交通事件持续时间中的应用。从休斯顿TranStar数据档案库中检索了超过110,000个具有52个以上变量的事件记录。尝试的ML技术包括:回归决策树,支持向量机(SVM),集成树(袋装和增强),高斯过程回归(GPR)和人工神经网络(ANN)。已知这些方法可有效处理大量和复杂的数据集。为了达到最佳建模精度,对每个模型的参数都进行了微调。结果表明,就平均绝对误差(MAE)而言,SVMand GPR模型的表现优于其他技术,其中最佳模型的MAE得分为14.34分钟。另一方面,简单的回归树是最差的总体模型,其MAE为16.74分钟。在训练时间上,两组模型之间存在相当大的差异:一方面是回归决策树,集成树和ANN,另一方面是SVM和GPR。前者需要更短的训练时间(每次少于一小时),而后者每个模型的训练时间在5到34小时之间。

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