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Development of a Crash Risk Prediction Model Using the k-Nearest Neighbor Algorithm

机译:使用k最近邻算法开发碰撞风险预测模型

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摘要

This study aims to create a crash risk prediction model using k-Nearest Neighbor, one of the machine learning algorithms. Based on the traffic flow information collected by an advanced traffic management system (ATMS) and the corresponding crash historical information and weather information, this model derives the probability of a crash occurrence by looking for the most similar conditions at the time of a past accident. The predicted results of the model were evaluated using the metrics of the receiver operating characteristic (ROC) curve and area under the curve (AUC), which indicated that model performance belongs to the good side. The results of this study are expected to upgrade the safety management system of the ATMS further and contribute to reducing crash occurrence by giving preemptive notification to drivers.
机译:这项研究旨在使用k-最近邻居(一种机器学习算法)创建碰撞风险预测模型。基于高级交通管理系统(ATMS)收集的交通流信息以及相应的撞车历史信息和天气信息,该模型通过在过去的事故发生时寻找最相似的条件来推导撞车发生的可能性。使用接收器工作特性(ROC)曲线和曲线下面积(AUC)的度量来评估模型的预测结果,这表明模型性能属于良好方面。预期这项研究的结果将进一步升级ATMS的安全管理系统,并通过向驾驶员发出提前通知来帮助减少碰撞事故的发生。

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