用用户特征分析方法描绘北京公交系统的乘客出行模式

Ke Zhang, Ailing Huang
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引用次数: 0

摘要

本文旨在为研究公共交通用户的出行模式提供一个指导框架。结合公共交通(PT)用户的出行数据和用户画像(UP)技术,对PT用户进行画像,可以有效了解用户的出行模式,对优化PT运营调度和线网规划具有重要意义。提出了一种基于词频-反文档频率加权算法的站区属性挖掘方法,确定用户出行站点的兴趣点属性,并通过莫兰指数计算用户出行站点的空间相关性模式。本文获得了一种通用的公共交通用户标签系统,并进行了一些相关方法的研究,包括四类用户偏好出行区域模式挖掘和站点区域属性挖掘方法。在北京案例的应用中,对公共交通用户的时空特征进行了精确的挖掘,最终形成了北京 PTUP 系统。本文构建了用户特征标签框架,并应用数据可视化、统计分析和K-means聚类等方法提取该系统框架指示的特定标签。通过这些分析过程,改进了用户标签系统,并通过对北京公共交通案例的分析验证了该系统的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Portraying passenger travel patterns for Beijing public transit system with user profiling method
Purpose The purpose of this paper is to provide a guiding framework for studying the travel patterns of PT users. The combination of public transit (PT) users’ travel data and user profiling (UP) technology to draw a portrait of PT users can effectively understand users’ travel patterns, which is important to help optimize the scheduling of PT operations and planning of the network. Design/methodology/approach To achieve the purpose, the paper presents a three-level classification method to construct the labeling framework. A station area attribute mining method based on the term frequency-inverse document frequency weighting algorithm is proposed to determine the point of interest attributes of user travel stations, and the spatial correlation patterns of user travel stations are calculated by Moran’s Index. User travel feature labels are extracted from travel data containing Beijing PT data for one consecutive week. Findings In this paper, a universal PT user labeling system is obtained and some related methods are conducted including four categories of user-preferred travel area patterns mining and a station area attribute mining method. In the application of the Beijing case, a precise exploration of the spatiotemporal characteristics of PT users is conducted, resulting in the final Beijing PTUP system. Originality/value This paper combines UP technology with big data analysis techniques to study the travel patterns of PT users. A user profile label framework is constructed, and data visualization, statistical analysis and K-means clustering are applied to extract specific labels instructed by this system framework. Through these analytical processes, the user labeling system is improved, and its applicability is validated through the analysis of a Beijing PT case.
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