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Prediction based on support vector machine for travel choice of high-speed railway passenger in China

机译:基于支持向量机的中国高速铁路旅客出行选择预测

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High-speed railway is a very important part of transportation industry in China, and travel choice has key effect on the development of high-speed railway. Therefore, research on travel behavior of passengers and prediction their travel choice, will offer valuable suggestion for high-speed railway running. In this paper, support vector machine (SVM) is the main method being used to predict. Support vector machine is based on the structural risk minimization principle, and it improves the generalization ability of learning machine to the maximum extent. When solving the limited-sample and nonlinear problems, support vector machine has advantages in predicting. In this research, we get six most important factors, which affect travel choice by the means of questionnaire survey, then use libsvm tool to build prediction model and optimize the train parameters of support vector machine. Finally the prediction accuracy is as high as 91.44%, which shows that support vector machine is good at predicting.
机译:高速铁路是中国交通运输业的重要组成部分,出行选择对高速铁路的发展具有关键作用。因此,研究旅客的出行行为并预测其出行选择,将为高速铁路的运行提供有价值的建议。在本文中,支持向量机(SVM)是用于预测的主要方法。支持向量机基于结构风险最小化原理,最大程度地提高了学习机的泛化能力。在解决有限样本和非线性问题时,支持向量机在预测方面具有优势。在这项研究中,我们得到了六个最重要的因素,这些因素通过问卷调查的方式影响出行选择,然后使用libsvm工具建立预测模型并优化支持向量机的火车参数。最终预测精度高达91.44%,表明支持向量机具有良好的预测能力。

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