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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Prediction for Traffic Accident Severity: Comparing the Bayesian Network and Regression Models
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Prediction for Traffic Accident Severity: Comparing the Bayesian Network and Regression Models

机译:交通事故严重程度的预测:贝叶斯网络和回归模型的比较

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The paper presents a comparison between two modeling techniques, Bayesian network and Regression models, by employing them in accident severity analysis. Three severity indicators, that is, number of fatalities, number of injuries and property damage, are investigated with the two methods, and the major contribution factors and their effects are identified. The results indicate that the goodness of fit of Bayesian network is higher than that of Regression models in accident severity modeling. This finding facilitates the improvement of accuracy for accident severity prediction. Study results can be applied to the prediction of accident severity, which is one of the essential steps in accident management process. By recognizing the key influences, this research also provides suggestions for government to take effective measures to reduce accident impacts and improve traffic safety.
机译:通过在事故严重性分析中使用贝叶斯网络模型和回归模型这两种建模技术,本文进行了比较。用这两种方法研究了三个严重性指标,即死亡人数,受伤人数和财产损失,并确定了主要的影响因素及其影响。结果表明,在事故严重度建模中,贝叶斯网络的拟合优度高于回归模型。这一发现有助于提高事故严重性预测的准确性。研究结果可用于事故严重程度的预测,这是事故管理过程中必不可少的步骤之一。通过识别关键影响因素,本研究还为政府采取有效措施减少事故影响和改善交通安全提供了建议。

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