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Towards a Better Understanding of Public Transportation Traffic: A Case Study of the Washington, DC Metro

机译:更好地理解公共交通:以华盛顿特区地铁为例

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The problem of traffic prediction is paramount in a plethora of applications, ranging from individual trip planning to urban planning. Existing work mainly focuses on traffic prediction on road networks. Yet, public transportation contributes a significant portion to overall human mobility and passenger volume. For example, the Washington, DC metro has on average 600,000 passengers on a weekday. In this work, we address the problem of modeling, classifying and predicting such passenger volume in public transportation systems. We study the case of the Washington, DC metro exploring fare card data, and specifically passenger in- and outflow at stations. To reduce dimensionality of the data, we apply principal component analysis to extract latent features for different stations and for different calendar days. Our unsupervised clustering results demonstrate that these latent features are highly discriminative. They allow us to derive different station types (residential, commercial, and mixed) and to effectively classify and identify the passenger flow of “unknown” stations. Finally, we also show that this classification can be applied to predict the passenger volume at stations. By learning latent features of stations for some time, we are able to predict the flow for the following hours. Extensive experimentation using a baseline neural network and two naïve periodicity approaches shows the considerable accuracy improvement when using the latent feature based approach.
机译:交通预测问题在从个人出行计划到城市规划的众多应用中至关重要。现有工作主要集中在道路网络的交通预测上。然而,公共交通在整体人员流动和乘客量中占了很大一部分。例如,华盛顿特区的地铁平均每个工作日有60万名乘客。在这项工作中,我们解决了在公共交通系统中对此类乘客数量进行建模,分类和预测的问题。我们以华盛顿特区地铁为例,研究了票价卡数据,尤其是车站的乘客进出流量。为了减少数据的维数,我们应用主成分分析来提取不同站点和不同日历天的潜在特征。我们的无监督聚类结果表明,这些潜在特征具有很高的判别力。它们使我们能够得出不同的车站类型(住宅,商业和混合车站),并有效地分类和识别“未知”客流。站。最后,我们还表明,该分类可用于预测车站的乘客量。通过学习一段时间的站点潜在功能,我们可以预测接下来几个小时的流量。当使用基于潜在特征的方法时,使用基线神经网络和两种自然周期方法进行的广泛实验显示出相当大的精度提高。

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