Clustering Ensemble Based on a New Consensus Function with Hamming Distance

Jieting Huo, Weihong Li, Boyi Wang
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Abstract

Unlike classification problems, there are no well known approaches to combining multiple clusterings which is more difficult than designing classifier ensembles since cluster labels are unknown. A new algorithm is to use Hamming distance as the similarity metric to find the best partition is proposed. Also a scheme for a selective initial cluster centers by Hamming distance is used in the consensus function, which help us to find the most likely different classes of the data. Experiment results show that the algorithm is more stable, higher performance and more efficiently than other compared methods.
基于Hamming距离共识函数的聚类集成
与分类问题不同,没有已知的方法来组合多个聚类,这比设计分类器集成更困难,因为聚类标签是未知的。提出了一种利用汉明距离作为相似性度量来寻找最佳分割的新算法。在一致性函数中采用了一种基于汉明距离的初始聚类中心选择方案,帮助我们找到最可能的不同类别的数据。实验结果表明,该算法比其他比较方法更稳定,性能更高,效率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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