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Double Partition Around Medoids based Cluster Ensemble

机译:基于Medoids的簇集成的双分区

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Cluster ensemble is one of the hot topics in the machine learning area. Though plenty of cluster ensemble methods and frameworks have been proposed, many cluster ensemble methods are easily faded by noisy datasets and local optimal problems. In this article, we introduced a novel cluster ensemble method, named as Double Partition Around Medoids based Cluster Ensemble (PAM2CE). PAM2CE will effectively weaken or even eliminate the effect of noisy datasets and local optimal problems via clustering attributes and selecting the representative attributes. The experimental results reveal the better robustness and effectiveness of proposed method.
机译:集群集成是机器学习领域的热门话题之一。尽管已经提出了大量的聚类集成方法和框架,但是许多聚类集成方法容易被嘈杂的数据集和局部最优问题淡化。在本文中,我们介绍了一种新颖的聚类集成方法,称为基于基于类群的聚类的双分区聚类(PAM 2 CE)。 PAM 2 CE将通过聚类属性和选择代表性属性有效地减弱甚至消除嘈杂的数据集和局部最优问题的影响。实验结果表明,该方法具有较好的鲁棒性和有效性。

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