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Modeling Mode Choice Behavior Incorporating Household and Individual Sociodemographics and Travel Attributes Based on Rough Sets Theory

机译:基于粗糙集理论的结合住户和个人社会人口学与出行属性的模式选择行为建模

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Most traditional mode choice models are based on the principle of random utility maximization derived from econometric theory. Alternatively, mode choice modeling can be regarded as a pattern recognition problem reflected from the explanatory variables of determining the choices between alternatives. The paper applies the knowledge discovery technique of rough sets theory to model travel mode choices incorporating household and individual sociodemographics and travel information, and to identify the significance of each attribute. The study uses the detailed travel diary survey data of Changxing county which contains information on both household and individual travel behaviors for model estimation and evaluation. The knowledge is presented in the form of easily understood IF-THEN statements or rules which reveal how each attribute influences mode choice behavior. These rules are then used to predict travel mode choices from information held about previously unseen individuals and the classification performance is assessed. The rough sets model shows high robustness and good predictive ability. The most significant condition attributes identified to determine travel mode choices are gender, distance, household annual income, and occupation. Comparative evaluation with the MNL model also proves that the rough sets model gives superior prediction accuracy and coverage on travel mode choice modeling.
机译:大多数传统的模式选择模型都是基于从计量经济学理论中得出的随机效用最大化的原理。可替代地,模式选择建模可以被认为是从确定替代方案之间的选择的解释变量反映出的模式识别问题。本文将粗糙集理论的知识发现技术应用于结合家庭和个人社会人口统计资料和旅行信息的旅行模式选择模型,并确定每种属性的意义。该研究使用长兴县的详细旅行日记调查数据,其中包含有关家庭和个人旅行行为的信息,以进行模型评估和评估。知识以易于理解的IF-THEN语句或规则的形式呈现,这些语句或规则揭示了每个属性如何影响模式选择行为。这些规则然后用于根据关于先前未见过的个人的信息来预测出行方式的选择,并评估分类性能。粗糙集模型显示出较高的鲁棒性和良好的预测能力。确定用来确定出行方式选择的最重要条件属性是性别,距离,家庭年收入和职业。与MNL模型的比较评估还证明,粗糙集模型可提供出众的预测精度,并能覆盖出行模式选择建模。

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