聚类分析
计算机科学
数据挖掘
模糊聚类
双聚类
相关聚类
CURE数据聚类算法
选择(遗传算法)
概念聚类
单连锁聚类
高维数据聚类
人工智能
树冠聚类算法
共识聚类
机器学习
数据流聚类
作者
Xiaojing Wu,Changxiu Cheng,R. Zurita‐Milla,Changqing Song
标识
DOI:10.1080/13658816.2020.1726922
摘要
Even though many studies have shown the usefulness of clustering for the exploration of spatio-temporal patterns, until now there is no systematic description of clustering methods for geo-referenced time series (GTS) classified as one-way clustering, co-clustering and tri-clustering methods. Moreover, the selection of a suitable clustering method for a given dataset and task remains to be a challenge. Therefore, we present an overview of existing clustering methods for GTS, using the aforementioned classification, and compare different methods to provide suggestions for the selection of appropriate methods. For this purpose, we define a taxonomy of clustering-related geographical questions and compare the clustering methods by using representative algorithms and a case study dataset. Our results indicate that tri-clustering methods are more powerful in exploring complex patterns at the cost of additional computational effort, whereas one-way clustering and co-clustering methods yield less complex patterns and require less running time. However, the selection of the most suitable method should depend on the data type, research questions, computational complexity, and the availability of the methods. Finally, the described classification can include novel clustering methods, thereby enabling the exploration of more complex spatio-temporal patterns.
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