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A New Efficient Approach in Clustering Ensembles

机译:集群集群中的一种新的高效方法

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摘要

Previous clustering ensemble algorithms usually use a consensus function to obtain a final partition from the outputs of the initial clustering. In this paper, we propose a new clustering ensemble method, which generates a new feature space from initial clustering outputs. Multiple runs of an initial clustering algorithm like k-means generate a new feature space, which is significantly better than pure or normalized feature space. Therefore, running a simple clustering algorithm on generated feature space can obtain the final partition significantly better than pure data. In this method, we use a modification of k-means for initial clustering runs named as "Intelligent k-means", which is especially defined for clustering ensembles. The results of the proposed method are presented using both simple k-means and intelligent k-means. Fast convergence and appropriate behavior are the most interesting points of the proposed method. Experimental results on real data sets show effectiveness of the proposed method.
机译:以前的群集集合算法通常使用共识函数来从初始聚类的输出中获取最终分区。在本文中,我们提出了一种新的聚类集合方法,它从初始聚类输出生成一个新的特征空间。像K-meance等初始聚类算法的多次运行生成一个新的特征空间,这显着优于纯或归一化的特征空间。因此,在生成的特征空间上运行简单的聚类算法可以显着优于纯数据更好地获得最终分区。在此方法中,我们使用名为“智能k均值”的初始聚类运行的K-means的修改,该运行尤其为群集集群集合定义。使用简单的K均值和智能k型方式呈现所提出的方法的结果。快速收敛和适当的行为是所提出的方法最有趣的点。实验结果对真实数据集的实验结果表明了该方法的有效性。

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