DocumentCode :
2735170
Title :
DBSCAN-GM: An improved clustering method based on Gaussian Means and DBSCAN techniques
Author :
Smiti, Abir ; Elouedi, Zied
Author_Institution :
LARODEC, Univ. of Tunis, Tunis, Tunisia
fYear :
2012
fDate :
13-15 June 2012
Firstpage :
573
Lastpage :
578
Abstract :
Clustering is one of the most useful methods of intelligent engineering domain, in which a set of similar objects are categorized into clusters. Almost all of the well-known clustering algorithms require input parameters which are hard to determine but have a significant influence on the clustering result. Furthermore, the majority is not robust enough towards noisy data. This paper presents an efficient and effective clustering technique, named DBSCAN-GM that combines Gaussian-Means and DBSCAN algorithms. The idea of DBSCAN-GM is to cover the limitations of DBSCAN, by exploring the benefits of Gaussian-Means: it runs Gaussian-Means to generate small clusters with determined cluster centers, in purpose to estimate the values of DBSAN´s parameters. The results of our method show that it is efficient even for large data sets especially data with large dimension and capable to handle noises, contrary to partitioning algorithms such as K-Means or Gaussian-Means. Additionally, DBSCAN-GM does not necessitate any priori information, in contrast to the density clustering DBSCAN obliging two input parameters which are hard to guess, namely Eps (the radius that bounds the neighborhood region of an object) and MinPts (the minimum number of objects that must exist in the objects neighborhood region). Simulative experiments are carried out on a variety of datasets, which highlight the DBSCAN-GM´s effectiveness and cluster validity to check the good quality of clustering results.
Keywords :
Gaussian processes; pattern clustering; DBSAN parameters; DBSCAN techniques; DBSCAN-GM; Eps; Gaussian mean techniques; K-means algorithms; MinPts; cluster centers; clustering technique; density clustering DBSCAN; improved clustering method; intelligent engineering domain; object neighborhood region; partitioning algorithms; similar object categorization; Clustering algorithms; Clustering methods; Databases; Noise; Noise measurement; Partitioning algorithms; Shape;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Engineering Systems (INES), 2012 IEEE 16th International Conference on
Conference_Location :
Lisbon
Print_ISBN :
978-1-4673-2694-0
Electronic_ISBN :
978-1-4673-2693-3
Type :
conf
DOI :
10.1109/INES.2012.6249802
Filename :
6249802
Link To Document :
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