挖掘个性化智能交通系统的公共交通使用

N. Lathia, Jon E. Froehlich, L. Capra
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引用次数: 58

摘要

旅客信息、路线规划和服务更新已成为公共交通系统的重要组成部分:它们通过提供有关延误和服务中断的信息,帮助人们在人造环境中导航。然而,这些系统缺乏的一个方面是定制信息的方式,以便为每个旅行者提供个性化的旅行时间估计和相关通知。挖掘每个用户的旅行历史,由自动票务系统收集,有可能解决这一差距。在这项工作中,我们分析了伦敦地铁旅行历史的一个这样的数据集。然后,我们提出并评估了以下方法:(a)预测系统用户的个性化出行时间;(b)根据未来的出行模式对站点进行排名,以确定用户最感兴趣的站点子集,从而提供有用的出行更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Public Transport Usage for Personalised Intelligent Transport Systems
Traveller information, route planning, and service updates have become essential components of public transport systems: they help people navigate built environments by providing access to information regarding delays and service disruptions. However, one aspect that these systems lack is a way of tailoring the information they offer in order to provide personalised trip time estimates and relevant notifications to each traveller. Mining each user’s travel history, collected by automated ticketing systems, has the potential to address this gap. In this work, we analyse one such dataset of travel history on the London underground. We then propose and evaluate methods to (a) predict personalised trip times for the system users and (b) rank stations based on future mobility patterns, in order to identify the subset of stations that are of greatest interest to the user and thus provide useful travel updates.
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