Capturing patterns and radical changes in long-distance mobility by Flickr data

Anton Galich
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Abstract

In contrast to daily travel behaviour, long-distance mobility constitutes a poorly understood area in transport research. Only few national household travel surveys include sections on long-distance travel and these usually focus on the trip to the destination without gathering information about mobility behaviour at the destination. Other sources of data on mobility are either restricted to the national level such as cell phone data or to specific modes of transport such as international flight statistics or floating car data. In addition, the outbreak of the COVID-19 pandemic in 2020 has illustrated how difficult it is to grasp abrupt changes in mobility behaviour.
Against this background this paper investigates the potential of Flickr data for capturing patterns and radical changes in long-distance mobility. Flickr is a social media online platform allowing its users to upload photos and to comment on their own and other users’ photos. It is mainly used for sharing holiday and travel experiences. The results show that Flickr constitutes a viable source of data for capturing patterns and radical changes in long-distance mobility. The distribution of the travel distances, the travel destinations as well as reduction of the mileage of all holiday trips in 2020 in comparison to 2019 due to the pandemic calculated on the basis of the Flickr data is very similar to the same indicators determined on the basis of a national household travel survey, official passenger flight statistics, and other official transportation statistics.
通过Flickr数据捕捉远距离移动的模式和根本变化
与日常出行行为相比,长途交通是交通研究中一个鲜为人知的领域。只有少数国家家庭旅行调查包括长途旅行部分,这些调查通常侧重于前往目的地的旅行,而没有收集有关目的地移动行为的信息。关于流动性的其他数据来源要么限于国家一级,如手机数据,要么限于特定的运输方式,如国际航班统计或浮动汽车数据。此外,2020年2019冠状病毒病大流行的爆发表明,要掌握流动行为的突然变化是多么困难。在此背景下,本文研究了Flickr数据在捕捉远距离移动模式和根本变化方面的潜力。Flickr是一个社交媒体在线平台,允许用户上传照片,并对自己和其他用户的照片进行评论。它主要用于分享度假和旅游经历。结果表明,Flickr构成了一个可行的数据来源,用于捕捉模式和长途移动的根本变化。基于Flickr数据计算的2020年与2019年相比,由于大流行,旅行距离、旅行目的地以及所有假期旅行里程减少的分布,与基于全国家庭旅行调查、官方客运航班统计和其他官方交通统计确定的相同指标非常相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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