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Model-Based Count Series Clustering for Bike Sharing System Usage Mining: A Case Study with the Velib' System of Paris

机译:基于模型的计数序列聚类用于自行车共享系统使用率挖掘:以巴黎Velib系统为例

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摘要

Today, more and more bicycle sharing systems (BSSs) are being introduced in big cities. These transportation systems generate sizable transportation data, the mining of which can reveal the underlying urban phenomenon linked to city dynamics. This article presents a statistical model to automatically analyze the trip data of a bike sharing system. The proposed solution partitions (i.e., clusters) the stations according to their usage profiles. To do so, count series describing the stations's usage through departure/arrival counts per hour throughout the day are built and analyzed. The model for processing these count series is based on Poisson mixtures and introduces a station scaling factor that handles the differences between the stations's global usage. Differences between weekday and weekend usage are also taken into account. This model identifies the latent factors that shape the geography of trips, and the results may thus offer insights into the relationships between station neighborhood type (its amenities, its demographics, etc.) and the generated mobility patterns. In other words, the proposed method brings to light the different functions in different areas that induce specific patterns in BSS data. These potentials are demonstrated through an in-depth analysis of the results obtained on the Paris Velib' large-scale bike sharing system.
机译:今天,在大城市中越来越多的自行车共享系统(BSS)被引入。这些交通系统生成大量的交通数据,对其进行挖掘可以揭示与城市动态相关的潜在城市现象。本文介绍了一种统计模型,可自动分析自行车共享系统的出行数据。所提出的解决方案根据站的使用情况对站进行划分(即,群集)。为此,构建并分析了通过全天每小时每小时出发/到达次数来描述车站使用情况的计数系列。用于处理这些计数序列的模型基于泊松混合,并引入了一个站点缩放因子,该因子可以处理站点的全局使用之间的差异。还考虑了工作日和周末使用情况之间的差异。该模型识别出影响行程地理位置的潜在因素,因此结果可以提供对车站附近类型(其便利设施,人口统计等)与生成的出行方式之间关系的深刻见解。换句话说,所提出的方法揭示了在不同区域中引起BSS数据中特定模式的不同功能。通过对在巴黎Velib大型自行车共享系统上获得的结果进行深入分析,证明了这些潜力。

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