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Nearly Optimal Clustering Risk Bounds for Kernel K-Means

Abstract

In this paper, we study the statistical properties of kernel kk-means and obtain a nearly optimal excess clustering risk bound, substantially improving the state-of-art bounds in the existing clustering risk analyses. We further analyze the statistical effect of computational approximations of the Nystr\"{o}m kernel kk-means, and prove that it achieves the same statistical accuracy as the exact kernel kk-means considering only Ω(nk)\Omega(\sqrt{nk}) Nystr\"{o}m landmark points. To the best of our knowledge, such sharp excess clustering risk bounds for kernel (or approximate kernel) kk-means have never been proposed before.

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