Continuous Adaptive Mining the Thin Skylines over Evolving Data Stream

Author(s):  
Guangmin Liang ◽  
Liang Su
Keyword(s):  
2021 ◽  
Vol 1955 (1) ◽  
pp. 012048
Author(s):  
Chunhua Yang ◽  
Cong Wang ◽  
Xiao Hu ◽  
Niankang You ◽  
Xuguang Yang

Author(s):  
Renxia Wan ◽  
Jingchao Chen ◽  
Lixin Wang ◽  
Xiaoke Su
Keyword(s):  

2021 ◽  
Author(s):  
Christian Nordahl ◽  
Veselka Boeva ◽  
Håkan Grahn ◽  
Marie Persson Netz

AbstractData has become an integral part of our society in the past years, arriving faster and in larger quantities than before. Traditional clustering algorithms rely on the availability of entire datasets to model them correctly and efficiently. Such requirements are not possible in the data stream clustering scenario, where data arrives and needs to be analyzed continuously. This paper proposes a novel evolutionary clustering algorithm, entitled EvolveCluster, capable of modeling evolving data streams. We compare EvolveCluster against two other evolutionary clustering algorithms, PivotBiCluster and Split-Merge Evolutionary Clustering, by conducting experiments on three different datasets. Furthermore, we perform additional experiments on EvolveCluster to further evaluate its capabilities on clustering evolving data streams. Our results show that EvolveCluster manages to capture evolving data stream behaviors and adapts accordingly.


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