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Finding patterns in urban tourist behaviour: a social network analysis approach based on TripAdvisor reviews

机译:寻找城市游客行为模式:基于TripAdvisor的社交网络分析方法

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Developments in ICT and the massive growth in social media usage have increased the availability of data on travel behaviour. This brings an array of new possibilities to improve destination management through Data-driven decisions. This data, however, needs to be analysed and interpreted in order to be beneficial for destination management. Different kinds of methodologies and data have already been applied to analyse spatial behaviour of tourists between and within destinations. The novelty of our paper in this sense that we apply a relational approach by conducting a network analysis methodology on a readily available big data source: user generated content (UGC) from TripAdvisor. The collected data from the city of Antwerp, Belgium shows how locals, Belgians, Europeans and non-Europeans have distinct review patterns, but also shows recurring behavioural patterns. By comparing the relational constellation of the review network to the spatial distribution of central and peripheral attractions, hotels and restaurants, we discuss the added value of social network analysis on UGC for translating (big) data into applicable information and knowledge. The results show a dominant position of a limited number of clustered attractions in the historic city centre, and shows how geographical proximity and relational proximity are interrelated for international reviewers but less for domestic reviewers. This finding is translated into a set of recommendations for policy makers and destination managers trying to accomplish a better distribution of tourists over the entire destination.
机译:信息通信技术的发展以及社交媒体使用的大量增长增加了旅行行为数据的可用性。这带来了一系列新的可能性,可通过数据驱动的决策来改善目的地管理。但是,需要对这些数据进行分析和解释,以利于目的地管理。不同种类的方法和数据已被应用于分析目的地之间和目的地内游客的空间行为。从这个意义上说,本文的新颖之处在于,我们通过对易于使用的大数据源(TripAdvisor的用户生成内容(UGC))进行网络分析方法来应用关系方法。从比利时安特卫普市收集的数据显示了当地人,比利时人,欧洲人和非欧洲人如何具有不同的评论模式,但也显示了重复的行为模式。通过比较评论网络与中心景点和周边景点,酒店和餐厅的空间分布的关系,我们讨论了社交网络分析在教资会上的附加值,以将(大)数据转换为适用的信息和知识。结果表明,在历史悠久的市中心中,少数聚簇景点占据主导地位,并且表明,国际评审人员之间的地理接近度和关系接近度之间是如何相互联系的,而国内评审员之间却没有如此。这一发现被转化为一系列针对决策者和目的地管理者的建议,这些决策者和目的地管理者试图在整个目的地上更好地分配游客。

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