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Identifying and characterizing popular non-work destinations by clustering cellphone and point-of-interest data

机译:通过聚类手机和兴趣点数据识别和表征流行的非工作目的地

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摘要

This paper uses recently newly available datasets to construct a typology of commercial patches reflecting the attraction that specific places hold for individuals and groups and corresponding to the non-work activities that they choose to engage in.For this study, a space-time pattern-detection algorithm was applied to six months of cellphone traces which identified 93 (precise but fluctuating) locations in Singapore with the highest density of people for each hour of the week. Next, we used Google Maps Places Application Programming Interface (API) to web-scrape (or derive information about) establishments for each of the 93 spots identified. A DBSCAN algorithm enabled us to form geometrical clusters for these establishments and produced a new geometry of patches composed of individual establishments. A selection of indicators captured features of the patches' spatial structure: their compactness, density, diversity of activity, the presence of anchor stores, and spatial dependence on proximity to shopping malls. Then, a k-medoids algorithm was used to combine these indicators and form homogeneous groups of commercial patches, thereby identifying for example, strips of restaurants or plazas with anchor supermarkets. The most popular places attracting the greatest number of non-work visitors were dense patches composed of diverse types of businesses.
机译:本文采用最近的新可用数据集来构建商业补丁的类型,反映了对个人和团体的特定位置以及对应于他们选择参与的非工作活动的吸引力。对于这项研究,一个时空模式 - 将检测算法应用于六个月的手机迹线,该迹线识别出新加坡的93(精确但波动)位置,每周每小时的人的最高密度。接下来,我们使用谷歌地图将应用程序编程接口(API)置于识别的93个点中的每一个的Web刮板(或导出信息)的建立。 DBSCAN算法使我们能够为这些企业形成几何集群,并产生由个别机构组成的补丁的新几何。一系列指标捕获了贴片空间结构的特征:它们的紧凑性,密度,活动的多样性,锚固店的存在,以及对购物中心附近的空间依赖。然后,用于将这些指标组合并形成均匀的商业贴片组,从而识别例如锚固超市的餐馆或广场的均匀组。吸引最多的非工作游客最受欢迎的地方是由不同类型的企业组成的密集补丁。

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