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首页> 外文期刊>International journal of sustainable transportation >Frequent-pattern growth algorithm based association rule mining method of public transport travel stability
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Frequent-pattern growth algorithm based association rule mining method of public transport travel stability

机译:基于频繁的模式生长算法的公共交通行程稳定性挖掘方法

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摘要

The accurate depiction and understanding of the travel behavior characteristics of public transport (PT) commuters is an important foundation for better improving PT service and encouraging car owners to use the sustainable and ecofriendly PT; and there are significant differences in the travel stability (TS) characteristic of PT commuters, developing methods for accurately measuring such differences is an issue. Therefore, smart card transaction data, line and stop data, and travel survey data from Beijing were collected, then individual travel chain information of commuting passengers was extracted using the associating and matching method. Thereafter, a multilevel characteristic indicator system including the number of nonhome activity points, commuting trip ratio, travel spatial equilibrium, time stability and departure time concentration was constructed to capture the individual TS. Moreover, an association rule mining model based on the frequent-pattern (FP) growth algorithm was developed by modeling the indicators as items and the PT-commuter TS as transactions. Thus, seven meaningful rules for revealing the internal relationships between individual travel characteristics and commuter TS were obtained, and PT commuters were classified into three groups according to the TS levels. Finally, a conceptual model of the mode shift to higher TS levels among commuters was developed, and some targeted measures for enhancing the TS levels of PT users were proposed. The findings are expected to provide new perspectives for travel behavior analysis and policy control to enhance and maintain passenger TS, also are conducive to increasing PT usage while reducing the usage of cars.
机译:对公共交通工具(PT)通勤者的旅行行为特征的准确描述和理解是更好地改善PT服务的重要基础,并鼓励汽车所有者使用可持续和ECOFriendly PT;在PT通勤者的旅行稳定性(TS)特征存在显着差异,用于准确测量此类差异的开发方法是一个问题。因此,收集了智能卡交易数据,线路和停止数据以及来自北京的旅行调查数据,然后使用关联和匹配方法提取通勤乘客的个人旅行链信息。此后,构建包括非全球活动点数,通勤跳闸比,行进空间平衡,时间稳定性和出发时间浓度的多级特征指示器系统以捕获单个TS。此外,通过将指标和PT-Commuter TS为事务建模,开发了一种基于频繁模式(FP)生长算法的关联规则挖掘模型。因此,获得了七种有意义的规则,用于揭示各个旅行特征和通勤TS之间的内部关系,并且根据TS水平分为三组。最后,开发了一种模式转移到较高TS水平的概念模型,提出了一种增强PT用户水平的一些有针对性的措施。预计调查结果将为旅行行为分析和政策控制提供新的观点,以增强和维护乘客TS,也有利于增加PT使用,同时减少汽车的使用。

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