Quantitative Study of Traffic Accident Prediction Models: A Case Study of Virginia Accidents

Tahani Almanie
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Abstract

Traffic accidents are a serious problem that threatens people's lives, health, and properties. Thus, decreasing traffic accidents is a crucial demand for public safety. This paper proposes two data mining models to predict accident risks based on the decision tree and the naive Bayes algorithms. The purpose of the classifiers is to predict the potential severity of a traffic accident based on a set of data attributes related to the weather factors, accident timing, and properties of the road. The models are developed using data on accidents in Virginia between 2016 and 2021. Several metrics are considered to measure the performance of each model such as accuracy, precision, recall, and F1-score. Furthermore, to statistically compare the performance of the prediction models, the study employs three quantitative analysis tools, approximate visual test, paired observations, and ANOVA. The experimental results revealed that the decision tree outperforms naive Bayes in terms of prediction accuracy.
交通事故预测模型的定量研究:以弗吉尼亚州交通事故为例
交通事故是一个严重的问题,威胁着人们的生命、健康和财产。因此,减少交通事故是公共安全的重要要求。本文提出了两种基于决策树和朴素贝叶斯算法的事故风险预测数据挖掘模型。分类器的目的是基于与天气因素、事故时间和道路属性相关的一组数据属性来预测交通事故的潜在严重程度。这些模型是根据2016年至2021年弗吉尼亚州的事故数据开发的。考虑几个指标来衡量每个模型的性能,如准确性、精度、召回率和f1分数。此外,为了统计比较预测模型的性能,研究采用了三种定量分析工具:近似视觉检验、配对观察和方差分析。实验结果表明,决策树在预测精度上优于朴素贝叶斯。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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