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[Author] Samuel Sangkon LEE(1hit)

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  • Study of a Reasonable Initial Center Selection Method Applied to a K-Means Clustering

    WonHee LEE  Samuel Sangkon LEE  Dong-Un AN  

     
    PAPER-Artificial Intelligence, Data Mining

      Vol:
    E96-D No:8
      Page(s):
    1727-1733

    Clustering methods are divided into hierarchical clustering, partitioning clustering, and more. K-Means is a method of partitioning clustering. We improve the performance of a K-Means, selecting the initial centers of a cluster through a calculation rather than using random selecting. This method maximizes the distance among the initial centers of clusters. Subsequently, the centers are distributed evenly and the results are more accurate than for initial cluster centers selected at random. This is time-consuming, but it can reduce the total clustering time by minimizing allocation and recalculation. Compared with the standard algorithm, F-Measure is more accurate by 5.1%.