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A fast k-means clustering algorithm using cluster center displacement

机译:利用聚类中心位移的快速k均值聚类算法

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In this paper, we present a fast k-means clustering algorithm (FKMCUCD) using the displacements of cluster centers to reject unlikely candidates for a data point. The computing time Of Our proposed algorithm increases linearly with the data dimension d, whereas the computational complexity of major available kd-tree based algorithms increases exponentially with the Value of d. Theoretical analysis shows that our method can reduce the computational complexity of full search by a factor of SF and SF is independent of vector dimension. The experimental results show that compared to full search, our proposed method can reduce computational complexity by a factor of 1.37-4.39 using the data set from six real images. Compared with the filtering algorithm, which is among the available best algorithms of k-means clustering, our algorithm can effectively reduce the computing time. It is noted that our proposed algorithm can generate the same clusters as that produced by hard k-means clustering. The superiority of our method is more remarkable when a larger data set with higher dimension is used.
机译:在本文中,我们提出了一种快速的k均值聚类算法(FKMCUCD),它使用聚类中心的位移来拒绝不太可能的数据点候选对象。我们提出的算法的计算时间随着数据维数d线性增加,而主要的基于kd-tree的主要算法的计算复杂度随着d的值呈指数增长。理论分析表明,该方法可以将全搜索的计算复杂度降低SF倍,并且SF与向量维数无关。实验结果表明,与完全搜索相比,我们提出的方法使用来自六个真实图像的数据集可以将计算复杂度降低1.37-4.39倍。与滤波算法相比,该算法是k均值聚类中可用的最佳算法之一,它可以有效地减少计算时间。注意,我们提出的算法可以产生与硬k均值聚类产生的聚类相同的聚类。当使用更大维度的更大数据集时,我们方法的优越性更加明显。

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