首页> 外文期刊>Journal of advanced transportation >Capturing the Characteristics of Car-Sharing Users: Data-Driven Analysis and Prediction Based on Classification
【24h】

Capturing the Characteristics of Car-Sharing Users: Data-Driven Analysis and Prediction Based on Classification

机译:捕获汽车共享用户的特点:基于分类的数据驱动分析和预测

获取原文
           

摘要

This work explores the characteristics of the usage behaviour of station-based car-sharing users based on the actual operation data from a car-sharing company in Gansu, China. We analyse the characteristics of the users’ demands, such as usage frequency and order quantity, for a day with 24 1?h time intervals. Results show that most car-sharing users are young and middle-aged men with a low reuse rate. The distribution of users’ usage during weekdays shows noticeable morning and evening peaks. We define two attributes, namely, the latent ratio and persistence ratio, as classification indicators to understand the user diversity and heterogeneity thoroughly. We apply the k-means clustering algorithm to group the users into four categories, namely, lost, early loyal, late loyal, and motivated users. The usage characteristics of lost users, including maximum rental time and travel distance, minimum percentage of same pickup and return station, and low percentage of locals, have noticeable differences from those of the other users. Late loyal users have lower rental time and travel distance than those of the other users. This manifestation is in line with the short-term lease of shared cars to complete short- and medium-distance travel design concepts. We also propose a model that predicts the driver cluster based on the decision tree. Numerical tests indicate that the accuracy is 91.61% when the user category is predicted four months in advance using the observation-to-judgment period ratio of 3?:?1. The results in this study can support enterprises in user management.
机译:这项工作根据来自中国甘肃的汽车共享公司的实际运营数据,探讨了基于车站的汽车共享用户的使用行为的特征。我们分析了用户需求的特征,例如使用频率和订单数量,每天24 1个时间间隔。结果表明,大多数汽车分享用户都是重复使用率低的年轻人和中年男性。平日期间的用户使用的分配显示出明显的早晨和晚上峰。我们定义了两个属性,即潜在比率和持久性比例,作为彻底了解用户分集和异质性的分类指示。我们将K-means集群算法应用于将用户分为四个类别,即丢失,早期忠诚,忠诚和激励用户。丢失的用户的使用特性,包括最大租赁时间和旅行距离,相同拾取和返回站的最小百分比,以及距离其他用户的低百分比,与其他用户的差异有明显的差异。晚期忠诚的用户租赁时间较低,旅行距离比其他用户的距离。这种表现形式符合共用汽车的短期租赁,以完成短期和中远旅游设计概念。我们还提出了一种模型,该模型基于决策树预测驱动程序集群。数值测试表明,使用观察到判断期比率为3?:1,当用户类别预测4个月时,准确度为91.61%?:?1。该研究的结果可以支持用户管理的企业。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号