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基于DAG-SVM的居民出行方式选择模型

曹雄赳 贾洪飞 伍速锋 张洋 康浩

交通信息与安全2016,Vol.34Issue(5):108-114,7.
交通信息与安全2016,Vol.34Issue(5):108-114,7.DOI:10.3963/j.issn1674-4861.2016.05.016

基于DAG-SVM的居民出行方式选择模型

A Model of Decision Process of Travel Modes Based on DAG-SVM

曹雄赳 1贾洪飞 2伍速锋 1张洋 1康浩1

作者信息

  • 1. 中国城市规划设计研究院 北京 100037
  • 2. 吉林大学交通学院 长春 130025
  • 折叠

摘要

Abstract

Improving the accuracy of prediction of travel modes of residents is of a great importance to evaluate the effect of traffic planning and transport strategy.Based on psychology and behavior science, the decision process of travel modes is analyzed.With a structuralized process of decision, a library of travel scenarios is established.A principal component analysis is used to analyze the main factors which have impacts on the decision process of travel modes.The factors are regarded as the inputs of support vector machine (SVM).The differences between SVM and neural network in principles of modeling are analyzed by a statistical learning theory.Then a directed acyclic graph support vector machine (DAG-SVM) model is developed.The results of prediction from different kernel functions are evaluated, and the parameters are optimized by the grid method and genetic algorithm.The results show that among several kernel functions, the radial basis function is the best for prediction.The genetic algorithm is better than the grid method in parameter optimization.The overall accuracy of prediction from the DAG-SVM model is 82.3%, which is nearly 9% higher than that from the neural network model.However the accuracy of prediction for travel by taxi is slightly lower than other ones.This is mainly due to the fact that travel by taxi is an alternative way for residents in particular circumstances, not as regular as other travel modes.

关键词

交通需求管理/出行方式选择/有向无环图/支持向量机/神经网络

Key words

traffic demand management/decision process of travel modes/directed acyclic graph/support vector machine/neural network

分类

交通工程

引用本文复制引用

曹雄赳,贾洪飞,伍速锋,张洋,康浩..基于DAG-SVM的居民出行方式选择模型[J].交通信息与安全,2016,34(5):108-114,7.

交通信息与安全

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1674-4861

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