在旅游调查方法中利用基于位置的社交媒体:将Twitter数据带入游戏

A. Abbasi, T. Rashidi, M. Maghrebi, S. Waller
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引用次数: 66

摘要

越来越多的文献致力于利用社交媒体的众包力量,从网上大量可用的信息中提取知识。本文讨论了如何以最小的成本间接使用社交媒体数据来提取旅行属性,如旅行目的和活动地点。因此,Twitter数据在补充其他交通相关数据来源(如家庭旅行调查或交通计数数据)方面的能力得到了检验。此外,还详细讨论了如何使用Twitter数据识别短期旅行者(如游客)以及如何分析他们的旅行模式。掌握有关游客/游客的适当信息——例如他们访问的地方、他们的来源地和他们在目的地的活动模式——对城市规划者来说非常重要。用户可用的个人资料信息和Twitter上自我报告的地理位置数据用于识别访问悉尼的游客以及那些在悉尼以外旅行的悉尼居民。所提供的数据和分析使我们能够了解和跟踪游客在城市中的活动,以便更好地进行城市规划。本文的结果为旅行需求建模者探索使用大数据(在本例中是Twitter数据)来建模短途(日常或基于活动)和长途(度假)旅行的可能性开辟了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilising Location Based Social Media in Travel Survey Methods: bringing Twitter data into the play
A growing body of literature has been devoted to harnessing the crowdsourcing power of social media by extracting knowledge from the huge amounts of information available online. This paper discusses how social media data can be used indirectly and with minimal cost to extract travel attributes such as trip purpose and activity location. As a result, the capacity of Twitter data in complementing other sources of transport related data such as household travel surveys or traffic count data is examined. Further, a detailed discussion is provided on how short term travellers, such as tourists, can be identified using Twitter data and how their travel pattern can be analysed. Having appropriate information about tourists/visitors -- such as the places they visit, their origin and the pattern of their movements at their destination -- is of great importance to urban planners. The available profile information of users and self-reported geo-location data on Twitter are used to identify tourists visiting Sydney as well as also those Sydney residents who made a trip outside Sydney. The presented data and analysis enable us to understand and track tourists' movements in cities for better urban planning. The results of this paper open up avenues for travel demand modellers to explore the possibility of using big data (in this case Twitter data) to model short distance (day-to-day or activity based) and long distance (vacation) trips.
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