Title of article :
Optimal Fuzzy Clustering in Overlapping Clusters
Author/Authors :
Ammor, Ouafa Faculty of Sciences and Technology of Fes - Department of Mathematics, Morocco , Lachkar, Abdelmonaime Moulay Ismail University - ESTM, Morocco , Slaoui, Khadija Faculty of Sciences Dhar Mehraz of Fes - Department of Physics, Morocco , Rais, Noureddine Faculty of Sciences and Technology of Fes - Department of Mathematics, Morocco
From page :
146
To page :
152
Abstract :
The fuzzy c-means clustering algorithm has been widely used to obtain the fuzzy k-partitions. This algorithm requires that the user gives the number of clusters k. To find automatically the “right” number of clusters, k, for a given data set, many validity indexes algorithms have been proposed in the literature. Most of these indexes do not work well for clusters with different overlapping degree. They usually have a tendency to fails in selecting the correct optimal clusters number when dealing with some data sets containing overlapping clusters. To overcome this limitation, we propose in this paper, a new and efficient clusters validity measure for determination of the optimal number of clusters which can deal successfully with or without situation of overlapping. This measure is based on maximum entropy principle. Our approach does not require any parameter adjustment, it is then completely automatic. Many simulated and real examples are presented, showing the superiority of our measure to the existing ones
Keywords :
Unsupervised clustering , cluster validity index , optimal clusters number , overlapping clusters , maximum entropy principle.
Journal title :
The International Arab Journal of Information Technology (IAJIT)
Journal title :
The International Arab Journal of Information Technology (IAJIT)
Record number :
2543534
Link To Document :
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