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The path of least resistance explaining tourist mobility patterns in destination areas using Airbnb data

机译:使用AIRBNB数据解释目的地区域中的旅游移动模式的最小阻力的路径

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Destination attractiveness research has become an important research domain in leisure and tourism economics. But the mobility behaviour of visitors in relation to local public transport access in tourist places is not yet well understood. The present paper seeks to fill this research gap by studying the attractiveness profile of 25 major tourist destination places in the world by means of a 'big data' analysis of the drivers of visitors' mobility behaviour and the use of public transport in these tourist places. We introduce the principle of 'the path of least resistance' to explain and model the spatial behaviour of visitors in these 25 global destination cities. We combine a spatial hedonic price model with geoscience techniques to better understand the place-based drivers of mobility patterns of tourists. In our empirical analysis, we use an extensive and rich database combining millions of Airbnb listings originating from the Airbnb platform, and complemented with TripAdvisor platform data and OpenStreetMap data. We first estimate the effect of the quality of the Airbnb listings, the surrounding tourist amenities, and the distance to specific urban amenities on the listed Airbnb prices. In a second step of the multilevel modelling procedure, we estimate the differential impact of accessibility to public transport on the quoted Airbnb prices of the tourist accommodations. The findings confirm the validity of our conceptual framework on 'the path of least resistance' for the spatial behaviour of tourists in destination places.
机译:目的地吸引力研究已成为休闲与旅游经济学的重要研究领域。但参观者与旅游景点的地方公共交通接入的流动性行为尚未得到很好的理解。本文旨在通过研究世界各地的25个主要旅游目的地地点的吸引力概况来填补这一研究差距,通过对游客移动行为的司机的“大数据”分析以及这些旅游景点的公共交通工具的“大数据”分析。我们介绍了“抵抗力的路径”的原则,解释和模仿这25个全球目的地城市的游客的空间行为。我们将空间储层价格模型与地球科学技术相结合,以更好地了解游客的流动模式的基于地方的驱动因素。在我们的实证分析中,我们使用源自Airbnb平台的数百万Airbnb列表的广泛和丰富的数据库,并配有TripAdvisor平台数据和OpenStreetMap数据。我们首先估计Airbnb列表,周边旅游设施以及与特定城市设施的距离的效果。在多级建模程序的第二步中,我们估计了对公共交通的可接近性对旅游住宿的价格的差异影响。调查结果证实了我们在目的地地区游客的空间行为的“最低阻力之路”的概念框架的有效性。

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