DocumentCode :
3731308
Title :
Dynamic DBSCAN-GM clustering algorithm
Author :
Abir Smiti;Zied Elouedi
Author_Institution :
LARODEC, Institut Sup?rieur de Gestion de Tunis, Universit? de Tunis, Tunisia, 41 Street of liberty, Bouchoucha, 2000 Bardo
fYear :
2015
Firstpage :
311
Lastpage :
316
Abstract :
Clustering algorithms are being the core topic of many fields of study in Computational Intelligence and Informatics. Their objective is to determine the critical grouping in a set of unlabeled data. Lot of clustering works engages input number of clusters which is severe to find out. Additionally, the majority is not forceful enough towards noisy data. On the contrary, the clustering method DBSCAN-GM, which is the merger of DBSCAN and Gaussian-means, can solve these problems. However, it is not dynamic, it is not suitable for the frequently change databases. In this paper, we present an extended version of DBSCAN-GM called Dynamic DBSCAN-GM (DDG) to handle incremental databases which evolve over time.
Keywords :
"Clustering algorithms","Heuristic algorithms","Noise measurement","Databases","Clustering methods","Shape","Partitioning algorithms"
Publisher :
ieee
Conference_Titel :
Computational Intelligence and Informatics (CINTI), 2015 16th IEEE International Symposium on
Type :
conf
DOI :
10.1109/CINTI.2015.7382941
Filename :
7382941
Link To Document :
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