Risk Prediction Model of Road Accidents During Long Holiday in Thailand Using Ensemble Learning with Decision Tree Approach

Paranya Palwisut
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Abstract

The rate of injury and death from traffic accidents during the New Year and Songkran Festival each year has high and are continuously on the increase. The researchers, therefore, has decided to study and develop a model for predicting the road accident risk during the holiday season with ensemble learning based on decision tree approach. The aim is to help reduce accidents and loss of life caused by road accidents. The dataset used in this research is traffic accidents resulting in injury and death data during the long holiday from 2008 to 2015 from hospitals across the country, accumulatively recorded by the National Institute for Emergency Medicine. Thisresearch compared the efficiency of data classification to find the best ensemble model for predicting traffic accident risk. The methods studied included Adaptive Boosting (AdaBoost), and Random Forest, and the decision tree techniques used in the experiment were J48, ID3, and CART. The results of experiment and comparisons of classification efficiency showed that the Random Forest algorithm with J48 decision tree was the most efficient model, providing an accuracy of up to 93.3%.
基于决策树集成学习的泰国长假期交通事故风险预测模型
每年春节和泼水节期间的交通事故伤亡率都很高,而且还在持续上升。因此,研究人员决定研究和开发一个基于决策树方法的集成学习预测假日期间道路事故风险的模型。其目的是帮助减少交通事故造成的事故和生命损失。本研究使用的数据集是2008年至2015年全国医院长假期间交通事故伤亡数据,由国家急诊医学研究所累积记录。本研究比较了数据分类的效率,以寻找预测交通事故风险的最佳集成模型。研究的方法包括Adaptive Boosting (AdaBoost)和Random Forest,实验中使用的决策树技术有J48、ID3和CART。实验结果和分类效率比较表明,采用J48决策树的随机森林算法是分类效率最高的模型,准确率高达93.3%。
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