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Multiple Kernel Fuzzy Clustering
2012
IEEE transactions on fuzzy systems
While fuzzy c-means is a popular soft-clustering method, its effectiveness is largely limited to spherical clusters. By applying kernel tricks, the kernel fuzzy c-means algorithm attempts to address this problem by mapping data with nonlinear relationships to appropriate feature spaces. Kernel combination, or selection, is crucial for effective kernel clustering. Unfortunately, for most applications, it is uneasy to find the right combination. We propose a multiple kernel fuzzy c-means (MKFC)
doi:10.1109/tfuzz.2011.2170175
fatcat:u4qtgpm4mnfo7py3enqvzh7wfu