AN AVERAGE-BASED APPROACH FOR INITIAL CENTROID SELECTION IN KMEANS ALGORITHM
DOI:
https://doi.org/10.57041/vol68iss4pp%25pKeywords:
Data clustering, Partitioned-based clustering algorithms, K-means, Initial centroidsAbstract
The underlying research work was focused on one of the standard k-means issue of initial centroid selection. An average based approach was used for avoiding random cluster initialization. The experiments of this study showed that the results obtained with proposed method were better and consistent. It was concluded that the proposed method had less classification error, reduced total number of iterations and took less execution time than random initialization method.

