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Type :article
Subject :N Fine Arts
Main Author :Muhammad Modi Lakulu
Additional Authors :Ramlah Mailok
Harunur Rosyid
Title :Optimizing K-Means initial number of cluster based heuristic approach: literature review analysis perspective
Place of Production :Tanjong Malim
Publisher :Fakulti Seni, Komputeran dan Industri Kreatif
Year of Publication :2019
Corporate Name :Universiti Pendidikan Sultan Idris
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Abstract : Universiti Pendidikan Sultan Idris
One  popular  clustering  technique -the  K-means  widely  use  in educational  scope  to  clustering  and  mapping  document,  data,  and  user performance in  skill. K-means clustering is  one  of  the classical and  most widely used clustering algorithms shows its efficiency in many  traditional applications its defect appears obviously when the data set to become much more complicated. Based on some research on K-means algorithm shows that Number of a cluster of K-means cannot easily  be specified in much real-world application, several algorithms requiring  the number of cluster as a parameter cannot be effectively employed. The aim of this paper describes the perspective  K-means  problems  underlying  research.  Literature  analysis  of previous studies suggesting that selection of the number of clusters randomly cause problems such as suitable producing globular cluster, less efficient if as the  number  of  cluster  grow  K-means  clustering  becomes  untenable. From those literature reviews, the heuristic optimization will be approached to solve an initial number of cluster randomly.   

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