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Predicting Future Driving Risk of Crash-Involved Drivers Based on a Systematic Machine Learning Framework

机译:根据系统机器学习框架预测涉及碰撞驱动程序的未来驾驶风险

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摘要

The objective of this paper is to predict the future driving risk of crash-involved drivers in Kunshan, China. A systematic machine learning framework is proposed to deal with three critical technical issues: 1. defining driving risk; 2. developing risky driving factors; 3. developing a reliable and explicable machine learning model. High-risk (HR) and low-risk (LR) drivers were defined by five different scenarios. A number of features were extracted from seven-year crash/violation records. Drivers’ two-year prior crash/violation information was used to predict their driving risk in the subsequent two years. Using a one-year rolling time window, prediction models were developed for four consecutive time periods: 2013–2014, 2014–2015, 2015–2016, and 2016–2017. Four tree-based ensemble learning techniques were attempted, including random forest (RF), Adaboost with decision tree, gradient boosting decision tree (GBDT), and extreme gradient boosting decision tree (XGboost). A temporal transferability test and a follow-up study were applied to validate the trained models. The best scenario defining driving risk was multi-dimensional, encompassing crash recurrence, severity, and fault commitment. GBDT appeared to be the best model choice across all time periods, with an acceptable average precision (AP) of 0.68 on the most recent datasets (i.e., 2016–2017). Seven of nine top features were related to risky driving behaviors, which presented non-linear relationships with driving risk. Model transferability held within relatively short time intervals (1–2 years). Appropriate risk definition, complicated violation/crash features, and advanced machine learning techniques need to be considered for risk prediction task. The proposed machine learning approach is promising, so that safety interventions can be launched more effectively.
机译:本文的目的是预测在中国昆山碰撞涉及司机的将来的驾驶风险。一个系统的机器学习框架,提出了应对三个关键技术问题:1.定义行车风险; 2.显影危险驾驶的因素; 3.制定一个可靠的和可解释的机器学习模型。高风险(HR)和低风险(LR)驱动程序由五种不同场景定义。许多功能是从七岁崩溃/违章记录提取。车手两年之前崩溃/违规信息被用来预测在其后的两年中他们的驾驶风险。 2013-2014,2014-2015,2015-2016,2016-2017和:用一年的滚动时间窗口预测模型,为连续四个时间段的发展。四基于树的集成学习技术进行了尝试,包括随机森林(RF),Adaboost的用决策树,梯度推进决策树(GBDT)和极端梯度提升决策树(XGboost)。使用临时转让测试和后续研究中应用验证训练的模型。定义行车风险的最佳方案是多维度的,包含死机复发,严重程度,以及故障的承诺。 GBDT似乎是在所有时间段的最佳模式的选择,以0.68的可接受的平均精确度(AP)上的最近的数据集(即,2016至2017年)。九个七个功能均与危险驾驶行为,其中带有驾驶风险的非线性关系。型号转移性相对短的时间间隔(1 - 2年)内举行。适当的风险定义,违反复杂/碰撞结构和先进的机器学习技术也需要考虑风险预测的任务。所提出的机器学习的方法是有前途的,所以安全性干预可以更有效地展开。

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