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首页> 外文期刊>Journal of Safety Research >Data mining of tree-based models to analyze freeway accident frequency
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Data mining of tree-based models to analyze freeway accident frequency

机译:基于树的模型的数据挖掘以分析高速公路事故发生频率

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Introduction: Statistical models, such as Poisson or negative binomial regression models, have been employed to analyze vehicle accident frequency for many years. However, these models have their own model assumptions and pre-defined underlying relationship between dependent and independent variables. If these assumptions are violated, the model could lead to erroneous estimation of accident likelihood. Classification and Regression Tree (CART), one of the most widely applied data mining techniques, has been commonly employed in business administration, industry, and engineering. CART does not require any pre-defined underlying relationship between target (dependent) variable and predictors (independent variables) and has been shown to be a powerful tool, particularly for dealing with prediction and classification problems. Method: This study collected the 2001-2002 accident data of National Freeway 1 in Taiwan. A CART model and a negative binomial regression model were developed to establish the empirical relationship between traffic accidents and highway geometric variables, traffic characteristics, and environmental factors. Results: The CART findings indicated that the average daily traffic volume and precipitation variables were the key determinants for freeway accident frequencies. By comparing the prediction performance between the CART and the negative binomial regression models, this study demonstrates that CART is a good alternative method for analyzing freeway accident frequencies. Impact on industry: By comparing the prediction performance between the CART and the negative binomial regression models, this study demonstrates that CART is a good alternative method for analyzing freeway accident frequencies.
机译:简介:多年来,一直采用统计模型(例如泊松或负二项式回归模型)来分析车辆事故发生的频率。但是,这些模型有其自己的模型假设以及因变量和自变量之间的预定义基础关系。如果违反了这些假设,则该模型可能会导致事故可能性的错误估计。分类和回归树(CART)是应用最广泛的数据挖掘技术之一,已广泛用于企业管理,行业和工程领域。 CART在目标(因变量)和预测变量(因变量)之间不需要任何预定义的基础关系,并且已被证明是强大的工具,尤其是在处理预测和分类问题时。方法:本研究收集了台湾1号国道的2001-2002年事故数据。建立了CART模型和负二项式回归模型,以建立交通事故与公路几何变量,交通特征和环境因素之间的经验关系。结果:CART结果表明,平均每日交通量和降水变量是高速公路事故发生频率的关键决定因素。通过比较CART和负二项式回归模型之间的预测性能,本研究表明CART是分析高速公路事故发生频率的一种很好的替代方法。对行业的影响:通过比较CART和负二项式回归模型之间的预测性能,本研究表明CART是分析高速公路事故发生频率的一种很好的替代方法。

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