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Co-location Pattern Mining of Geosocial Data to Characterize Urban Functional Spaces

机译:地社会数据的共置模式挖掘以表征城市功能空间

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Spatial Co-location Pattern (SCP) mining continues to play a critical role in understanding the morphology of urban functional spaces of world cities. It requires a large amount of fine-granular data and computing efficiency to handle the combinatorial explosion of co-location patterns. To this end, this work has two main contributions - i) We showcase a novel approach to perform SCP mining to characterize intra-city scale structure of urban functionality or co-located activity patterns using geosocial Points-of-Interest (POI) vector data. ii) We present a generalized and optimized parallel/distributed SCP mining algorithm implemented on a Hadoop MapReduce system and demonstrate the utility of our approach using the city of Berlin (Germany) as an example. The SCPs tend to vary across Berlin’s municipal boroughs and at different spatial scales. Our findings on Berlin’s functional structure conform to existing urban geography models. Such a data-driven exploration of massive urban POIs using distributed computing is first of its kind and can help better understand the changing dynamics of urban functionality, as well as physical, and social network structure around the world.
机译:空间共置模式(SCP)挖掘在理解世界城市的城市功能空间形态方面继续发挥关键作用。它需要大量的细粒度数据和计算效率,才能处理同一位置模式的组合爆炸式增长。为此,这项工作有两个主要贡献-i)我们展示了一种新颖的方法来进行SCP挖掘,以使用地理社会兴趣点(POI)矢量数据来表征城市功能或同地活动模式的城市内部规模结构。 ii)我们介绍了在Hadoop MapReduce系统上实现的通用和优化的并行/分布式SCP挖掘算法,并以柏林市(德国)为例演示了我们方法的实用性。 SCP倾向于在柏林市辖区和不同的空间尺度上变化。我们对柏林功能结构的发现符合现有的城市地理模型。这种使用分布式计算对大型城市POI进行数据驱动的探索尚属首次,它可以帮助更好地了解全球范围内城市功能,物理和社交网络结构的不断变化的动态。

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