Title of article :
Selecting Optimal k in the k-Means Clustering Algorithm
Author/Authors :
Jahanian, Mojtaba Department of Computer Engineering - Faculty of Engineering - Arak Branch - Islamic Azad University, Arak Markazi, IRAN , Karimi, Abbas Department of Computer Engineering - Faculty of Engineering - Arak Branch - Islamic Azad University, Arak Markazi, IRAN , Zarafshan, Faraneh Department of Computer Engineering - Faculty of Engineering - Ashtian Branch, Islamic Azad University, Arak markazi, Iran
Abstract :
Clustering is one of the essential machine learning algorithms. Data is not labeled in clustering. The most
fundamental challenge in clustering algorithms is to choose the correct number of clusters at the beginning of the
algorithm. The proper performance of the clustering algorithm depends on selecting the appropriate number of
clusters and selecting the optimal right centers. The quality and an optimal number of clusters are essential in
algorithm analysis. This article has tried to distinguish our work from other writings by carefully analyzing and
comparing existing algorithms and a clear and accurate understanding of all aspects. Also, by comparing other
methods using three criteria, the minimum internal distance between points of a cluster and the maximum external
distance between clusters and the location of a cluster, we have presented an intelligent method for selecting the
optimal number of clusters. In this method, clusters with the lowest error and the lowest internal variance are
chosen based on the results obtained from the research.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Clustering Algorithms , K-means , Clustering , the optimal number of clusters
Journal title :
Journal of Computer and Robotics