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A META CLUSTERING APPROACH FOR ENSEMBLE PROBLEM
2013
International Journal of Image Processing and Vision Science
A critical problem in cluster ensemble research is how to combine multiple clustering to yield a superior clustering result. Leveraging advanced graph partitioning techniques, we solve this problem by reducing it to a graph partitioning problem. We introduce a new reduction method that constructs a bipartite graph from a given cluster ensemble. The resulting graph models both instances and clusters of the ensemble simultaneously as vertices in the graph. Our approach retains all of the
doi:10.47893/ijipvs.2013.1054
fatcat:gfmtdbkmtjdahbpc2alga75cj4