基于重复迁移行为的用户匹配算法

Hongtai Yang, Xiang Li, Xiaotian Qin, Yan Jiang, Fangfang Zheng
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引用次数: 0

摘要

旅行数据包含关于旅行者行为和模式的重要信息,但尚未得到充分的开发和利用。造成这个问题的原因之一是,这些数据在共享和分析时需要匿名化,这使得很难将旅行联系在一起形成旅行旅行。因此,本研究拟提出一种充分利用换乘行为特征的跨交通方式(本研究为共享单车和地铁)用户匹配方法,并根据时间和空间约束对匹配结果进行进一步修剪。结果表明,共享单车出行与地铁出行存在较强的相关性,这与前人的研究结果一致。将不同出行时间的共享单车用户拟合到匹配结果中,得到两个经验公式。拟合优度分别为0.981和0.865,匹配效果较好。同时,也表明本文算法能较好地处理用户与迁移和通勤行为的匹配问题。该算法可以为城市交通系统的交通规划和运行管理提供重要的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User Matching Algorithm Based on Repeated Transfer Behavior
Trip data contains important information about travelers' behaviors and patterns, but it has not been fully explored and utilized. One of the reasons that cause this problem is that these data need to be anonymized when shared and analyzed, which makes it difficult to link trips together to form trip tour. As a result, this study intends to propose a method to match users across transportation modes (bikeshare and metro in this study) making full use of the characteristics of the transfer behavior, and the matching results are further pruned based on time and space constraints. The results show that there is a strong correlation between bikeshare travel and metro travel, which is consistent with the results of previous studies. Two empirical formulas are obtained by fitting bikeshare users with different trip times to the matching results. The goodness of fit is 0.981 and 0.865, respectively, and the matching effect is good. At the same time, it also shows that the algorithm in this paper can better handle the matching of users with transfer and commuting behavior. This algorithm can provide important support for transportation planning and operation management of the urban transportation system.
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