将聚类和递归logit模型应用于Wi-Fi数据,区分不同类型的城市游客

Yuhan Gao, Jan-Dirk Schmöcker
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引用次数: 1

摘要

我们讨论了基于Wi-Fi传感器数据区分不同类型游客的可能性。这些数据是通过在游客频繁光顾的京都东山市安装的20个传感器获得的。我们把旅游描述为一系列可以观察到的传感器。基于这些记录,我们选择了一种聚类方法,其中我们选择了聚类变量,其中包括弯路的程度和观察弯路的时间长度。我们发现,我们可以区分在短时间内参观多个观光景点的游客团体和其他更悠闲地穿过该地区并可能享受纪念品商店和餐馆的游客团体。对于主要的旅游集群,采用递归Logit方法,基于路径长度和沿途景点对其路线选择进行建模。我们发现估计的参数反映了这些群体特征。
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Distinguishing different types of city tourists through clustering and recursive logit models applied to Wi-Fi data

We discuss the possibilities to distinguish different types of tourists based on Wi-Fi sensor data. The data are obtained from 20 sensors employed in Higashiyama, Kyoto, which is an area highly frequented by tourists. We describe tourist-tours as a sequence of sensors at which they are observed. Based on these records a clustering approach is chosen where we select as clustering variables, among others, the degree of detours and the length of time they are observed. We find that we can distinguish groups of tourists that are visiting a number of sightseeing spots in a short time from others who walk through the area more leisurely and are likely enjoying souvenir shops and restaurants. For the main tourist clusters than a Recursive Logit approach is applied to model their route-choice based on path length and attractions en-route. We find that the estimated parameters reflect these group characteristics.

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