Comparison Study on Classification Performance for Short-Term Urban Traffic Flow Condition Using Decision Tree Algorithms

Jiao-Jiao Wang, Jinfel Wang, Feng Lu, Zhi-dong Cao, Y. Liao, Yu-hui Deng
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引用次数: 4

Abstract

This study focused on comparing the classification performance and accuracy for short-term urban traffic flow condition using decision tree algorithms (CHAID, CART, QUEST and C5.0). In building decision tree models, input variables were multiple roads' traffic flow condition value at current time, while, target variable was a certain road's condition value at future temporal horizon from 5-30 min. The results showed that when all the predictors were input without feature selection, the classification accuracy obtained by CART algorithm was higher than the other three algorithms. While using CART and CHAID with feature selection , the accuracy showed lower but the obtained decision tree expressed more concise and understandable with fewer nodes, besides, by enlarging training samples to about 10 times of that before , the accuracy with feature selection is higher than that without feature selection.
基于决策树算法的短期城市交通流状态分类性能比较研究
本研究的重点是比较决策树算法(CHAID、CART、QUEST和C5.0)对短期城市交通流状况的分类性能和准确率。在构建决策树模型时,输入变量为当前时刻多条道路的交通流状况值,目标变量为未来5-30分钟某条道路的交通流状况值。结果表明,在不进行特征选择的情况下,CART算法获得的分类准确率高于其他三种算法。使用CART和CHAID进行特征选择时,准确率较低,但得到的决策树节点更少,表达更简洁易懂,并且将训练样本扩大到之前的10倍左右,有特征选择的准确率高于没有特征选择的准确率。
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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