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Object-Neighbourhood Clustering Ensemble Method

机译:对象邻域聚类集成方法

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摘要

Clustering is an unsupervised learning and clustering results are often inconsistent and unreliable when different clustering algorithms are used. In this paper we have proposed a clustering ensemble framework, named Object-Neighbourhood Clustering Ensemble (ONCE), to improve the consistency, reliability and quality of the clustering result. The core of the ONCE is a new consensus function that addresses the uncertain agreements between members by taking the neighbourhood relationship between object pairs into account in the similarity matrix. The experiments are carried out on 11 benchmark datasets. The results show that our ensemble method outperforms the co-association method, when the Average linkage is used. Furthermore, the results show that our ensemble method is more accurate than the baseline algorithm, and this indicates that the clustering ensemble method is more consistent and reliable than a single clustering algorithm.
机译:聚类是一种无监督的学习,当使用不同的聚类算法时,聚类结果通常是不一致且不可靠的。在本文中,我们提出了一种称为对象邻域聚类集成(ONCE)的聚类集成框架,以提高聚类结果的一致性,可靠性和质量。 ONCE的核心是一个新的共识功能,该功能通过在相似性矩阵中考虑对象对之间的邻域关系来解决成员之间的不确定协议。实验是在11个基准数据集上进行的。结果表明,当使用“平均”链接时,我们的集成方法要优于协关联方法。此外,结果表明我们的集成方法比基线算法更准确,这表明聚类集成方法比单个聚类算法更加一致和可靠。

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