DocumentCode
259425
Title
An Enhanced Clustering of High Dimensional Datasets Using Unsupervised Quick Reduct Algorithm (USQR) With Rough Set Theory
Author
Gomathi, P. ; Dhanabal, S. ; Kaliappan, Vishnu Kumar
Author_Institution
Dept. of Comput. Sci., Jansons Inst. of Technol., Coimbatore, India
fYear
2014
fDate
Feb. 27 2014-March 1 2014
Firstpage
185
Lastpage
187
Abstract
The performance of K-means clustering algorithm is poor for high dimensions data set. The goal of this paper is to reduce the high dimensional data to a meaningful low dimensional data representation, so that the efficiency of clustering algorithm will be elevated. Hence to improve the efficiency of clustering analysis, unsupervised quick reduct algorithm (USQR) is used for selecting the features from high dimensional data. Then the selected features are used to find the initial centroid using k-MAM initialization technique for k-means. The initial centroids are finally used to find the clusters. The results are compared to k-means and k-MAM with USQR so that outperforms well, in terms of accuracy and number of iterations compared to the k-means, for high dimensional data.
Keywords
data structures; feature selection; pattern clustering; rough set theory; USQR; clustering analysis; data representation; enhanced clustering; feature selection; high dimensional datasets; k-MAM initialization technique; k-means clustering algorithm; rough set theory; unsupervised quick reduct algorithm; Accuracy; Algorithm design and analysis; Clustering algorithms; Computer science; Partitioning algorithms; Prediction algorithms; Set theory; Clustering; Dimension Reduction; Initial centroid; KMAM; k-means;
fLanguage
English
Publisher
ieee
Conference_Titel
Computing and Communication Technologies (WCCCT), 2014 World Congress on
Conference_Location
Trichirappalli
Print_ISBN
978-1-4799-2876-7
Type
conf
DOI
10.1109/WCCCT.2014.55
Filename
6755135
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