Lambda共识聚类

Douglas R. Heisterkamp
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引用次数: 0

摘要

本文介绍了共识聚类的一种扩展,允许将共识的结果反馈给原始聚类过程。原始的集群进程可以使用这些信息来更新它们对数据的分区。提出了一种称为lambda共识的指数加权方法,将共识信息合并到基于图和基于向量空间的聚类算法中。成功的共识聚类高度依赖于集合中分区的质量和多样性。反馈信号允许聚类过程调整其算法,以尝试提高集合中分区集的质量和多样性。通信需求与共识聚类的顺序相同,因为只有共识标签返回到聚类过程。该方法在真实世界的数据集上进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lambda Consensus Clustering
This paper introduces an extension to consensus clustering that allows a feedback of the results of the consensus to the original clustering processes. The original clustering processes may use this information to update their partitioning of the data. An exponential weighting approach, called lambda consensus, is presented as a method to merged the consensus information into graph based and vector space based clustering algorithms. Successful consensus clustering is highly dependent on the quality and diversity of the partitions in the ensemble. The feedback signal allows the clustering processes to adapt their algorithms to attempt to improve quality and diversity of the set of partitions in the ensemble. Communication requirements are on the same order as consensus clustering as only the consensus labels are returned to the clustering processes. The method is evaluated on real world data sets.
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