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Heterogenous Trip Distance-Based Route Choice Behavior Analysis Using Real-World Large-Scale Taxi Trajectory Data

机译:基于跳闸距离的路径选择行为分析使用现实世界大型出租车轨迹数据分析

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Most early research on route choice behavior analysis relied on the data collected from the stated preference survey or through small-scale experiments. This manuscript focused on the understanding of commuters’ route choice behavior based on the massive amount of trajectory data collected from occupied taxicabs. The underlying assumption was that travel behavior of occupied taxi drivers can be considered as no different than the well-experienced commuters. To this end, the DBSCAN algorithm and Akaike information criterion (AIC) were first used to classify trips into different categories based on the trip length. Next, a total of 9 explanatory variables were defined to describe the route choice behavior, and and the path size (PS) logit model was then built, which avoided the invalid assumption of independence of irrelevant alternatives (IIA) in the commonly seen multinomial logit (MNL) model. The taxi trajectory data from over 11,000 taxicabs in Xi’an, China, with 40 million trajectory records each day were used in the case study. The results confirmed that commuters’ route choice behavior are heterogenous for trips with varying distances and that considering such heterogeneity in the modeling process would better explain commuters’ route choice behaviors, when compared with the traditional MNL model.
机译:关于路由选择行为分析的大多数早期研究依赖于所说的偏好调查或通过小规模实验收集的数据。本手稿专注于了解通勤者的路线选择行为,基于从占用的出租车收集的轨迹数据的大量轨迹数据。潜在的假设是占用的出租车司机的旅行行为可以被视为与经验丰富的通勤者没有什么不同。为此,首先使用DBSCAN算法和AKAIKE信息标准(AIC)根据跳闸长度对TRIPS分类为不同类别。接下来,定义了9个解释性变量来描述路由选择行为,然后构建路径大小(PS)Logit模型,避免了在常见的多项式Lo​​git中无关替代品(IIA)独立性的无效假设(MNL)模型。在案例研究中使用了来自中国西安超过11,000个出租车的出租车轨迹数据,在案例研究中使用了40万个轨迹记录。结果证实,随着传统MNL模型相比,上升距离具有不同距离的越来越多的途径,即考虑在建模过程中的这种异质性,将更好地解释通勤者的路线选择行为。

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