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Multi-Optimisation Consensus Clustering

机译:多重优化共识聚类

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Ensemble Clustering has been developed to provide an alternative way of obtaining more stable and accurate clustering results. It aims to avoid the biases of individual clustering algorithms. However, it is still a challenge to develop an efficient and robust method for Ensemble Clustering. Based on an existing ensemble clustering method, Consensus Clustering (CC), this paper introduces an advanced Consensus Clustering algorithm called Multi-Optimisation Consensus Clustering (MOCC), which utilises an optimised Agreement Separation criterion and a Multi-Optimisation framework to improve the performance of CC. Fifteen different data sets are used for evaluating the performance of MOCC. The results reveal that MOCC can generate more accurate clustering results than the original CC algorithm.
机译:已开发了集成聚类,以提供获得更稳定和准确的聚类结果的替代方法。它旨在避免各个聚类算法的偏差。但是,开发一种有效且鲁棒的Ensemble聚类方法仍然是一个挑战。本文基于现有的整体聚类方法Consensus Clustering(CC),介绍了一种先进的共识聚类算法,即Multi-Optimization Consensus Clustering(MOCC),该算法利用优化的协议分离准则和多重优化框架来提高性能。 CC。 15种不同的数据集用于评估MOCC的性能。结果表明,与原始CC算法相比,MOCC可以生成更准确的聚类结果。

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