Title of article :
NEMST K-means: Introducing a Center-Based Clustering Algorithm for Detecting Arbitrary Shape and Heterogeneous Clusters
Author/Authors :
Ghorbannia Delavar، Arash نويسنده , , Mohebpour، Gholam Hasan نويسنده Department of Computer Science, Payame Noor University, PO BOX 19395-3697, Tehran, Iran ,
Issue Information :
فصلنامه با شماره پیاپی 0 سال 2014
Abstract :
K-means is a typical clustering algorithm which is widely used for clustering datasets and is one of the simplest, non-supervised algorithms and also it doesnʹt need any prior knowledge about the data distribution. A key limitation of K-means is its cluster model which is based on spherical clusters that are separable in a way so that the mean value converges towards the cluster center and it is not able to detect arbitrary shape and heterogeneous clusters. In this paper we introduce Normalized Euclidean Distance minimum spanning tree based K-means (NEMST K-means) which is a center-based partitioning algorithm that uses minimum spanning tree and introduces new membership and objective functions. NEMST K-means algorithm is applied to several well-known datasets. Experimental results show that it is able to detect arbitrary shape and heterogeneous clusters and can obtain better clustering results than K-means.
Journal title :
International Journal of Mechatronics, Electrical and Computer Technology (IJMEC)
Journal title :
International Journal of Mechatronics, Electrical and Computer Technology (IJMEC)