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Car sharing system: what transaction datasets reveal on users' behaviors

机译:汽车分享系统:在用户行为上显示的交易数据集是什么

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Car sharing systems are gaining new members every month. However, few researches are conducted to better understand how these systems are used. In this paper, typical patterns of use of the car sharing system are identified using a transaction database covering a full year of operation. Data mining techniques are used to classify users according to their temporal patterns of car use frequency, traveled distance, and week use variability. The experiments reveal various classes of users. With respect to number of transactions throughout the year, users are segmented in two large classes: the regular and occasional ones, the majority of users belonging to the latter. The study of average trip length leads to the identification of 5 clusters of users. Finally, 8 types of typical weeks of use are described. Information about users' patterns could help the car sharing managers to optimize the use of the cars. It can also assist users in selecting the most advantageous subscription offer.
机译:汽车分享系统每月都获得新成员。但是,少量的研究是为了更好地了解如何使用这些系统。在本文中,使用覆盖全年操作的交易数据库来识别汽车共享系统的典型使用模式。数据挖掘技术用于根据其汽车使用频率,行驶距离和周使用变化的时间模式对用户进行分类。实验揭示了各类用户。关于全年的交易数量,用户在两个大课程中分段:常规和偶尔的常规,其中大多数用户属于后者。平均行程长度的研究导致识别5个用户群。最后,描述了8种类型的典型数周使用。有关用户模式的信息可以帮助汽车共享管理人员优化汽车的使用。它还可以帮助用户选择最有利的订阅报价。

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