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A comparative study of machine learning classifiers for modeling travel mode choice

机译:机器学习分类器对出行方式选择建模的比较研究

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The analysis of travel mode choice is an important task in transportation planning and policy making in order to understand and predict travel demands. While advances in machine learning have led to numerous powerful classifiers, their usefulness for modeling travel mode choice remains largely unexplored. Using extensive Dutch travel diary data from the years 2010 to 2012, enriched with variables on the built and natural environment as well as on weather conditions, this study compares the predictive performance of seven selected machine learning classifiers for travel mode choice analysis and makes recommendations for model selection. In addition, it addresses the importance of different variables and how they relate to different travel modes. The results show that random forest performs significantly better than any other of the investigated classifiers, including the commonly used multinomial logit model. While trip distance is found to be the most important variable, the importance of the other variables varies with classifiers and travel modes. The importance of the meteorological variables is highest for support vector machine, while temperature is particularly important for predicting bicycle and public transport trips. The results suggest that the analysis of variable importance with respect to the different classifiers and travel modes is essential for a better understanding and effective modeling of people's travel behavior. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为了理解和预测出行需求,对出行方式选择的分析是交通运输计划和政策制定中的重要任务。尽管机器学习的进步导致了许多强大的分类器,但它们在模拟出行模式选择方面的有用性仍未得到充分探索。这项研究使用2010年至2012年的大量荷兰旅行日记数据,丰富了建筑和自然环境以及天气条件的变量,比较了七个选定的机器学习分类器对旅行模式选择分析的预测性能,并提出了建议型号选择。此外,它还解决了不同变量的重要性以及它们与不同出行方式之间的关系。结果表明,随机森林的性能明显优于其他调查的分类器,包括常用的多项式logit模型。虽然行程距离是最重要的变量,但其他变量的重要性随分类器和行驶模式而变化。气象变量对于支持向量机的重要性最高,而温度对于预测自行车和公共交通出行尤为重要。结果表明,对于不同分类器和出行方式的可变重要性分析对于更好地理解和有效地模拟人们的出行行为至关重要。 (C)2017 Elsevier Ltd.保留所有权利。

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