The discriminative functional mixture model for a comparative analysis of bike sharing systems

C. Bouveyron, E. Côme, J. Jacques
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引用次数: 108

Abstract

Bike sharing systems (BSSs) have become a means of sustainable intermodal transport and are now proposed in many cities worldwide. Most BSSs also provide open access to their data, particularly to real-time status reports on their bike stations. The analysis of the mass of data generated by such systems is of particular interest to BSS providers to update system structures and policies. This work was motivated by interest in analyzing and comparing several European BSSs to identify common operating patterns in BSSs and to propose practical solutions to avoid potential issues. Our approach relies on the identification of common patterns between and within systems. To this end, a model-based clustering method, called FunFEM, for time series (or more generally functional data) is developed. It is based on a functional mixture model that allows the clustering of the data in a discriminative functional subspace. This model presents the advantage in this context to be parsimonious and to allow the visualization of the clustered systems. Numerical experiments confirm the good behavior of FunFEM, particularly compared to state-of-the-art methods. The application of FunFEM to BSS data from JCDecaux and the Transport for London Initiative allows us to identify 10 general patterns, including pathological ones, and to propose practical improvement strategies based on the system comparison. The visualization of the clustered data within the discriminative subspace turns out to be particularly informative regarding the system efficiency. The proposed methodology is implemented in a package for the R software, named funFEM, which is available on the CRAN. The package also provides a subset of the data analyzed in this work.
基于判别函数混合模型的共享单车系统对比分析
自行车共享系统(bss)已经成为一种可持续的多式联运方式,目前在世界上许多城市提出。大多数bss还提供对其数据的开放访问,特别是对其自行车站的实时状态报告。对这些系统产生的大量数据的分析对BSS提供商更新系统结构和策略特别有意义。这项工作的动机是有兴趣分析和比较几个欧洲bss,以确定bss的共同操作模式,并提出实际的解决方案,以避免潜在的问题。我们的方法依赖于识别系统之间和系统内部的公共模式。为此,开发了一种基于模型的聚类方法,称为FunFEM,用于时间序列(或更一般的功能数据)。它基于一个功能混合模型,该模型允许在判别功能子空间中对数据进行聚类。在这种情况下,该模型的优点是简洁,并且允许集群系统的可视化。数值实验证实了FunFEM的良好性能,特别是与最先进的方法相比。将FunFEM应用于德高和伦敦交通倡议的BSS数据,我们可以识别出10种一般模式,包括病态模式,并在系统比较的基础上提出切实可行的改进策略。在判别子空间内的聚类数据的可视化被证明是关于系统效率的特别信息。所提出的方法在R软件的一个名为funFEM的软件包中实现,该软件包可在CRAN上获得。该包还提供了在此工作中分析的数据的子集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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