基于碰撞记录信息系统数据集的多层感知器预测致命碰撞

Thanh Hung Duong, F. Qiao, Jyh-haw Yeh, Yunpeng Zhang
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引用次数: 1

摘要

尽管当局和研究人员做出了努力,但每年的致命车祸数量并没有减少的迹象。为了分析致命碰撞,研究人员一直致力于找出影响伤害严重程度的因素,因此开发了许多碰撞预测模型。通常,损伤的严重程度被分为五个不同的等级。尽管如此,在许多研究中,像死亡和伤残这样的少数类别被合并,以便数据集变得平衡,模型可以提供体面的预测。然而,这种方法并不能帮助分析致命的碰撞,因为它们与其他类型的伤害相结合。因此,在本研究中,我们提出了一个多层感知器模型用于碰撞死亡的二元分类。该模型被证明能够处理严重不平衡的数据集,同时提供良好的性能。此外,对模型的输入进行敏感性分析,以估计碰撞相关因素的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Fatality Crashes with Multilayer Perceptron of Crash Record Information System Datasets
Despite the effort of the authorities and researchers, there has been no sign of decreasing in the number of fatal crashes annually. To analyze the deadly collisions, researchers have focused on finding which factors affect injury severity, and thus many crash prediction models for it had been developed. Commonly the injury severity is categorized into five different classes. Still, in many studies, minority classes like fatality and incapacitating injury were merged so that the dataset becomes balanced, and the model can provide decent predictions. However, this approach does not help analyze the fatal crashes as they are joined with other types of injury. Therefore, in this study, we proposed a multilayer perceptron model for binary classification of crash fatality. The model was proved to be able to handle heavily imbalanced datasets while providing decent performance. Moreover, a sensitivity analysis was conducted on the input of the model to estimate the importance of crash-related factors.
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