Survey of Single and Multi Objective Clustering Ensemble

Clustering is a popular data analysis and data mining technique. Most of the clustering  methods use only one objective function to partition data items into the clusters. It seems that using more than one objective provide the ability for a clustering method to provide better performance. The most common purpose of an analysis is to choose the best trade-offs among all the defined and conflicting objectives. However, many clustering studies are formulated as a problem whose goal is to find the “best” solution, which corresponds to the minimum or maximum value of a single objective function that lumps all different objectives into one

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