Comparative Study Between Decision Trees and Neural Networks to Predictfatal Road Accidents in Lebanon

Z. Farhat, Ali Karouni, B. Daya, P. Chauvet
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引用次数: 1

Abstract

Nowadays, road traffic accidents are one of the leading causes of deaths in this world. It is a complex phenomenon leaving a significant negative impact on human’s life and properties. Classification techniques of data mining are found efficient to deal with such phenomena. After collecting data from Lebanese Internal Security Forces, data are split into training and testing sets using 10-fold cross validation. This paper aims to apply two different algorithms of Decision Trees C4.5 and CART, and various Artificial Neural Networks (MLP) in order to predict the fatality of road accidents in Lebanon. Afterwards, a comparative study is made to find the best performing algorithm. The results have shown that MLP with 2 hidden layers and 42 neurons in each layer is the best algorithm with accuracy rate of prediction (94.6%) and area under curve (AUC 95.71%).
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决策树与神经网络在黎巴嫩致命交通事故预测中的比较研究
如今,道路交通事故是世界上导致死亡的主要原因之一。它是一种复杂的现象,对人类的生命和财产造成了重大的负面影响。数据挖掘的分类技术可以有效地处理这种现象。在从黎巴嫩内部安全部队收集数据后,使用10倍交叉验证将数据分为训练集和测试集。本文旨在应用决策树C4.5和CART两种不同的算法,以及各种人工神经网络(MLP)来预测黎巴嫩道路交通事故的死亡人数。然后进行比较研究,找出性能最好的算法。结果表明,2个隐藏层,每层42个神经元的MLP是预测准确率(94.6%)和曲线下面积(AUC)为95.71%的最佳算法。
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