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An efficient clustering ensemble selection algorithm

机译:一种高效的聚类集成选择算法

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摘要

Clustering ensemble selection has been confirmed that it can always achieve better result than traditional clustering ensemble algorithms. However, many selective clustering ensemble algorithms cannot eliminate the inferior quality partitions' influence and the accuracy of clustering is not high. In order to solve the problems, the paper proposes a new selective clustering ensemble algorithm. The algorithm, firstly, uses clustering validity evaluation to evaluate all available clustering ensemble partitions and selects the best quality as reference partition; secondly, the paper defines selection strategy via the quality and diversity; lastly, the paper proposes the adaptive weight strategy of ensemble members. The experimental results show that the new algorithm is effective and clustering performance could be significantly improved.
机译:聚类集成选择已被证实,与传统的聚类集成算法相比,它总能获得更好的结果。但是,许多选择性聚类集成算法不能消除劣质分区的影响,并且聚类的准确性不高。为了解决这些问题,本文提出了一种新的选择性聚类集成算法。该算法首先利用聚类有效性评估来评估所有可用的聚类集成分区,并选择质量最好的作为参考分区。其次,通过质量和多样性定义了选择策略。最后,提出了集合成员的自适应权重策略。实验结果表明,该算法是有效的,聚类性能明显提高。

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