TRIPDECODER:从智能卡数据研究地铁系统的行程时间属性和路线偏好

Xiancai Tian, Baihua Zheng, Yazhe Wang, Hsiao-Ting Huang, Chih-Chieh Hung
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引用次数: 5

摘要

在本文中,我们的目标是恢复地铁系统中通勤者所采取的准确路线,这些路线没有被自动收费(AFC)系统捕获,因此仍然未知。我们策略性地提出了两个推理任务来处理恢复,一个是推断每个旅行链路的旅行时间,这有助于地铁网络内任何旅行的总持续时间,另一个是根据历史旅行记录和在先前推理任务中推断的每个旅行链路的旅行时间来推断路线偏好。由于这两个推理任务是相互关联的,现有的大部分作品同时执行这两个任务。然而,我们的解决方案TripDecoder采用了一种完全不同的方法。TripDecoder充分利用了这样一个事实:在地铁系统中,有些行程只有一条可行的路线。它策略性地将两个推理任务解耦,只将只有一条实际路线的行程记录作为行程时间的第一个推理任务的输入,并将推断的行程时间作为附加输入提供给第二个推理任务,既提高了推理任务的准确性,又有效地降低了两个推理任务的复杂性。基于AFC系统在新加坡和台北捕获的城市规模的真实旅行记录,我们进行了两个案例研究,以比较TripDecoder及其竞争对手的准确性和效率。正如预期的那样,TripDecoder在这两个数据集上都达到了最佳的准确性,并且还展示了其优越的效率和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TRIPDECODER: Study Travel Time Attributes and Route Preferences of Metro Systems from Smart Card Data
In this article, we target at recovering the exact routes taken by commuters inside a metro system that are not captured by an Automated Fare Collection (AFC) system and hence remain unknown. We strategically propose two inference tasks to handle the recovering, one to infer the travel time of each travel link that contributes to the total duration of any trip inside a metro network and the other to infer the route preferences based on historical trip records and the travel time of each travel link inferred in the previous inference task. As these two inference tasks have interrelationship, most of existing works perform these two tasks simultaneously. However, our solution TripDecoder adopts a totally different approach. TripDecoder fully utilizes the fact that there are some trips inside a metro system with only one practical route available. It strategically decouples these two inference tasks by only taking those trip records with only one practical route as the input for the first inference task of travel time and feeding the inferred travel time to the second inference task as an additional input, which not only improves the accuracy but also effectively reduces the complexity of both inference tasks. Two case studies have been performed based on the city-scale real trip records captured by the AFC systems in Singapore and Taipei to compare the accuracy and efficiency of TripDecoder and its competitors. As expected, TripDecoder has achieved the best accuracy in both datasets, and it also demonstrates its superior efficiency and scalability.
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