Title of article :
Does Determination of Initial Cluster Centroids Improve the Performance of K-Means Clustering Algorithm? Comparison of Three Hybrid Methods by Genetic Algorithm, Minimum Spanning Tree, and Hierarchical Clustering in an Applied Study
Author/Authors :
Pourahmad, Saeedeh Shiraz University of Medical Sciences - Shiraz, Iran , Basirat, Atefeh Biostatistics Department - Medical School - Shiraz University of Medical Sciences - Shiraz, Iran , Rahimi, Amir Department of Molecular Medicine - School of Advanced Medical Sciences and Technologies - Shiraz University of Medical Sciences - Shiraz, Iran , Doostfatemeh, Marziyeh Biostatistics Department - Medical School - Shiraz University of Medical Sciences - Shiraz, Iran
Abstract :
Random selection of initial centroids (centers) for clusters is a fundamental defect in K-means clustering algorithm as the
algorithm’s performance depends on initial centroids and may end up in local optimizations. Various hybrid methods have been
introduced to resolve this defect in K-means clustering algorithm. As regards, there are no comparative studies comparing these
methods in various aspects, the present paper compared three hybrid methods with K-means clustering algorithm using
concepts of genetic algorithm, minimum spanning tree, and hierarchical clustering method. Although these three hybrid
methods have received more attention in previous researches, fewer studies have compared their results. Hence, seven
quantitative datasets with different characteristics in terms of sample size, number of features, and number of different classes
are utilized in present study. Eleven indices of external and internal evaluating index were also considered for comparing the
methods. Data indicated that the hybrid methods resulted in higher convergence rate in obtaining the final solution than the
ordinary K-means method. Furthermore, the hybrid method with hierarchical clustering algorithm converges to the optimal
solution with less iteration than the other two hybrid methods. However, hybrid methods with minimal spanning trees and
genetic algorithms may not always or often be more effective than the ordinary K-means method. Therefore, despite the
computational complexity, these three hybrid methods have not led to much improvement in the K-means method. However, a
simulation study is required to compare the methods and complete the conclusion.
Keywords :
K-Means , Hybrid , Algorithm , Hierarchical
Journal title :
Computational and Mathematical Methods in Medicine