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Space-time series clustering: Algorithms, taxonomy, and case study on urban smart cities

机译:时空序列聚类:算法,分类和城市智能城市的案例研究

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This paper provides a short overview of space-time series clustering, which can be generally grouped into three main categories such as: hierarchical, partitioning-based, and overlapping clustering. The first hierarchical category is to identify hierarchies in space-time series data. The second partitioning-based category focuses on determining disjoint partitions among the space-time series data, whereas the third overlapping category explores fuzzy logic to determine the different correlations between the space-time series clusters. We also further describe solutions for each category in this paper. Furthermore, we show the applications of these solutions in an urban traffic data captured on two urban smart cities (e.g., Odense in Denmark and Beijing in China). The perspectives on open questions and research challenges are also mentioned and discussed that allow to obtain a better understanding of the intuition, limitations, and benefits for the various space-time series clustering methods. This work can thus provide the guidances to practitioners for selecting the most suitable methods for their used cases, domains, and applications.
机译:本文提供了时空序列集群的简短概述,它通常可以分为三个主要类别,例如:分层,基于分区和重叠的聚类。第一分层类别是在时空序列数据中识别层次结构。基于第二分区的类别侧重于确定空时序列数据中的不相交分区,而第三重叠类别探讨模糊逻辑以确定空时序列簇之间的不同相关性。我们还进一步描述了本文中每个类别的解决方案。此外,我们展示了这些解决方案在两个城市智能城市捕获的城市交通数据中的应用(例如,在丹麦和北京的欧登塞)。还提到了关于开放性问题和研究挑战的观点,并讨论了允许更好地了解各种时空序列聚类方法的直觉,限制和益处。因此,这项工作可以向从业者提供指导,用于为其使用的案例,域和应用选择最合适的方法。

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