The famous K-means clustering algorithm is sensitive to the selection of the initial centroids and may converge to a local minimum of the criterion function value. A new algorithm for initialization of the K-means clustering algorithm is presented. The proposed initial starting centroids procedure allows the K-means algorithm to converge to a "better" local minimum. Our algorithm shows that refined initial starting centroids indeed lead to improved solutions. A framework for implementing and testing various clustering algorithms is presented and used for developing and evaluating the algorithm.
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CITATION STYLE
El Agha, M., & M. Ashour, W. (2012). Efficient and Fast Initialization Algorithm for K-means Clustering. International Journal of Intelligent Systems and Applications, 4(1), 21–31. https://doi.org/10.5815/ijisa.2012.01.03